SlideShare ist ein Scribd-Unternehmen logo
1 von 58
Downloaden Sie, um offline zu lesen
A Study of Priors and Algorithms for Signal Recovery
by Convex Optimization Techniques
Shunsuke Ono
Yamada Lab.
Dept. Communications and Integrated Systems
Tokyo Institute of Technology
2014/06/12
General Introduction
2
3
Signal Recovery Problem
Signal recovery is a fundamental problem in signal processing
• signal reconstruction
• image restoration
• compressed sensing
• tensor completion
...
signal recovery problems = inverse problems of the form:
observation
Goal: estimate from and
noise contamination linear degradation
How to resolve this ill-posed/ill-conditioned problem?
unknown signal
4
Prior and Convex Optimization
Some a priori information on signal of interest, e.g.,
• sparsity
• smoothness
• low-rankness
should be taken into consideration.
desired signal
convex function
convex set
1. D. P. Palomar and Y. C. Eldar, Eds., Convex Optimization in Signal Processing and Communications, Cambridge University Press, 2009.
2. J.-L. Starck et al., Sparse Image and Signal Processing: Wavelets, Curvelets,Morphological Diversity. Cambridge University Press, 2010.
3. H. H. Bauschke et al., Eds., Fixed-Point Algorithm for Inverse Problems in Science and Engineering, Springer-Verlag, 2011.
a-priori information convex function =: prior
• l1-norm [Donoho+ ‘03; Candes+ ‘06]
• total variation (TV) [Rudin+ ‘92; Chambolle ‘04]
• nuclear norm [Fazel ‘02; Recht et al. ‘11]
advantage: 1. local optimal = global optimal
2. flexible framework
A powerful approach: convex optimization [see, e.g., 1-3]
5
Optimization Algorithms for Signal Recovery
Optimization algorithms for signal recovery must deal with
• useful priors = nonsmooth convex function
• problem scale = often more than 10^4
proximal splitting methods [e.g., Gabay+ ‘76; Lions+ ‘79; Combettes+ ‘05; Condat ‘13]
• first-order (without Hessian)
• nonsmooth functions
• multiple constraints
Why do we need more?
Useful priors
Efficient
algorithms
Motivation & Goal
6
# prior: signal-specific properties are NOT fully exploited.
=> undesired results, e.g., texture degradation, color artifact, …
# algorithm: CANNOT deal with sophisticated constraints.
=> only the intersection of projectable convex sets.
Goal: design priors and algorithms to resolve them.
7
Structure of The Dissertation
Chap. 1 General Introduction
Chap. 2 Preliminaries
Chap. 3 Image restoration with component-wise
use of priors
Chap. 4 Blockwise low-rank prior for cartoon-texture
image decomposition and restoration
Chap. 5 Priors for color artifact reduction
in image restoration
Chap. 6 A hierarchical convex optimization algorithm
with primal-dual splitting
Chap. 7 An efficient algorithm for signal recovery with
sophisticated data-fidelity constraints
Chap. 8 General conclusion
Main
chapters
priors
algorithms
8
Structure of The Dissertation
Chap. 1 General Introduction
Chap. 2 Preliminaries
Chap. 3 Image restoration with component-wise
use of priors
Chap. 4 Blockwise low-rank prior for cartoon-texture
image decomposition and restoration
Chap. 5 Priors for color artifact reduction
in image restoration
Chap. 6 A hierarchical convex optimization algorithm
with primal-dual splitting
Chap. 7 An efficient algorithm for signal recovery with
sophisticated data-fidelity constraints
Chap. 8 General conclusion
priors
algorithms
Main
chapters
9
Chap. 4 Blockwise low-rank prior for cartoon-texture
image decomposition and restoration
Background
10
Cartoon-Texture Decomposition Model
11
image cartoon texture
Assumption: image = sum of two components
optimization problem [Meyer ‘01; Vese+ ‘03; Aujol+ ’05; ~ Schaeffer+ ‘13 ]
advantage: 1. prior suitable to each component
2. extraction of texture
priors for each component data-fidelity to
Cartoon-Texture Decomposition Model
12
image
optimization problem [Meyer ‘01; Vese+ ‘03; Aujol+ ‘05; ~ Schaeffer+ ‘13 ]
total variation (TV) [Rudin 92]: suitable for cartoon
cartoon texture
Cartoon-Texture Decomposition Model
13
image
optimization problem [Meyer ‘01; Vese+ ‘03; Aujol+ ‘05; ~ Schaeffer+ ‘13 ]
Texture is rather difficult to model…
cartoon texture
Existing Texture Priors
14
G norm frame
2001 ~ 2005 ~ 2013
noise
fine pattern
local adaptivity
capability
prior
->
[Schaeffer+ ‘13][Meyer ‘01]
[Aujol+ ‘05]
[Ng+ ‘13]
[Daubechies+ ‘05]
[Elad+ ’05]
[Fadili+ ‘10]
Contribution
15
Propose a prior for a better interpretation of texture.
2001 ~ 2005 ~ 2013
Noise
Fine pattern
Local adaptivity
Proposed
prior
G norm frame
[Schaeffer+ ‘13][Meyer ‘01]
[Aujol+ ‘05]
[Ng+ ‘13]
[Daubechies+ ‘05]
[Elad+ ’05]
[Fadili+ ‘10]
SVD, Rank and Nuclear Norm
16
• singular value decomposition (SVD)
nonzero singular values
• number of nonzero singular values
• nuclear norm
tightest convex relaxation of rank [Fazel 02]
* applications to robust PCA (sparse + low-rank)
[Gandy & Yamada ‘10; Candes+ ‘11; Gandy, Recht, Yamada ‘11]
rank
nuclear norm
Proposed Method
17
How To Model Texture?
18
globally dissimilar but locally well-patterned
Any block is approximately low-rank after suitable shear.
Any block is approximately low-rank after suitable shear.
Proposed Prior: Block Nuclear Norm (1/2)
19
Definition: pre-Block-nuclear-norm (pre-BNN)
nuclear normpositive weight
Important property of pre-BNN
Pre-BNN is tightest convex relaxation of
weighted blockwise rank
* Generalization of [Fazel ‘02]
Proposed Prior: Block Nuclear Norm (2/2)
20
Definition: Block Nuclear Norm (BNN)
periodic expansion operator (overlap) shear operator
Any block is approximately low-rank after suitable shear.
BNN becomes small,
i.e., good texture prior.
Cartoon-Texture Decomposition Using BNN
21image cartoon texture
• Patterns running in different directions are separately extracted.
• Proximal splitting methods can solve the problem after reformulation.
proposed cartoon-texture decomposition model
texture (K=3) sub-texture 1 sub-texture 2 sub-texture 3
various shear angles
22
Experimental Results
CASE 1: pure decomposition
compared with a state-of-the-art decomposition [Schaeffer & Osher, 2013]
image
cartoon
texture
cartoon
texture
[Schaeffer & Osher 2013] “A low patch-
rank interpretation of texture,” SIAM J.
Imag. Sci. [Schaeffer & Osher 2013] proposed
23
Experimental Results
CASE 2: blur+20%missing pixels
compared also with [Schaeffer & Osher 2013]
PSNR: 23.20
SSIM: 0.6613
PSNR: 23.75
SSIM: 0.6978
observation [Schaeffer & Osher 2013] proposed
24
Experimental Results
CASE 2: blur+20%missing pixels
Compared with a state-of-the-art decomposition [Schaeffer & Osher, 2013]
PSNR: 23.20
SSIM: 0.6613
PSNR: 23.75
SSIM: 0.6978
observation [Schaeffer & Osher 2013] proposed
25
Chap. 5 Priors for color artifact reduction
in image restoration
Background
26
Color Artifact in Image Restoration
27
restored by an existing prior
original
observation
color artifact
Color-Line Property
28color-line
restored by
an existing priororiginal
corrupted
# color-line: RGB entries are linearly distributed in local regions.
[Omer & Werman ‘04]
Contribution
29color-line
original
corrupted
Propose a prior for promoting color-line property.
reconstructed
existing +
proposed prior
restored by
an existing prior
Proposed Method
30
Mathematical Modeling of Color-Line
31
color image
B G R
-th local region
(e.g., block)
Vectorize
matrix for
-th local region
Define matrices for every local region of a color image.
color-line property  low-rankness of
Proposed Prior: Local Color Nuclear Norm
32
number of local regions
key principle
rank( ) = 1exact cases
Local Color Nuclear Norm (LCNN)
Proposed Prior: Local Color Nuclear Norm
33
key principle
color-line property  small singular values of
practical cases rank( ) ≠ 1
but is small
Suppressing LCNN promotes the color-line property.
Local Color Nuclear Norm (LCNN)
Application to Denoising
34
color-line
Proximal splitting methods are applicable after reformulation.
smoothness [VTV]
dynamic range
data-fidelity robust to
Impulsive noise
: color image contaminated by impulsive noise
optimization problem
[VTV] Bresson et al. “Fast dual minimization of the vectorial total variation norm and
applications to color image processing”, Inverse Probl. Img., 2008.
Experimental Results
35
observation VTV VTV+LCNN original
22.95, 7.59 24.30, 5.80
25.12, 3.07 27.22, 2.58
(PSNR, D2000) (PSNR, D2000)
36
Chap. 6 A hierarchical convex optimization algorithm
with primal-dual splitting
Background
37
NOT uniqueUnique
NOT strictly convexStrictly convex
.
38
contains infinitely many solutions non-strict convexity of .
Solutions of Convex Optimization Problems
Solution set of a convex optimization problem
Solutions could be considerably different in another criterion.
39
Hierarchical Convex Optimization
ideal strategy: hierarchical convex optimization:
highly involved (≠the intersection of projectable convex sets)
proximal splitting methods cannot solve the problem.
selector: smooth convex function
via fixed point set characterization
[e.g., Yamada ‘01; Ogura & Yamada‘03; Yamada, Yukawa, Yamagishi ‘11]
Definition: nonexpansive mapping
computable nonexpansive mapping on a certain Hilbert space
40
Hierarchical Convex Optimization
fixed point set characterized problem
Hybrid Steepest Descent Method (HSDM) [e.g., Yamada ‘01; Ogura & Yamada ‘03]
nonexpansive mapping gradient of selector
Q. What kinds of are available?
41
• Forward-Backward Splitting (FBS) method [Passty ’79; Combettes+ ‘05]
• Douglas-Rachford Splitting (DRS) method [Lions+ ‘79; Combettes+ ‘07]
Two characterizations underlying proximal splitting methods
are given in [Yamada, Yukawa, Yamagishi ‘11].
Q. Can we deal with a more flexible formulation?
Nonexpansive Mappings for
Definition: proximity operator [Moreau ‘62]
42
• Forward-Backward Splitting (FBS) method [Passty ’79; Combettes+ ‘05]
• Douglas-Rachford Splitting (DRS) method [Lions+ ’79; Combettes+ ‘07]
• Primal-Dual Splitting (PDS) method [Condat ‘13; Vu ‘13]
Nonexpansive Mappings for
Two characterizations underlying proximal splitting methods
are given in [Yamada, Yukawa, Yamagishi ‘11].
43
• Primal-Dual Splitting (PDS) method [Condat ‘13; Vu ‘13]
Contribution
• reveal convergence properties
• modify gradient computation
• extract operator-theoretic idea from [Condat 13]
• reformulate in a certain product space
incorporate
hierarchical convex optimization by HSDM
Proposed Method
44
45
Outline
Reformulate in the canonical product space with dual problem
Extract & incorporate fixed point set characterization from [Condat ‘13]
Install another inner product for nonexpansivity of by [Condat ‘13]
Apply HSDM with modified gradient computation w.r.t.
46
Reformulation in The Canonical Product Space
solution set of the first stage problem (=primal problem)
solution set of the dual problem of the first stage problem
By letting
Note:
47
Incorporation of PDS Characterization
Extract the PDS fixed point characterization from [Condat ‘13]
48
Activation of Nonexpansivity
is nonexpansive NOT on the canonical product space
Definition: canonical inner product of
BUT on the following space with another inner product [Condat ‘13]
where
: strongly positive bounded linear operator
49
Solver via HSDM
NOTE:
We can apply HSDM [e.g., Yamada ‘01; Ogura & Yamada ‘03]
50
Convergence of HSDM with PDS
Assumptions:
Convergence 1:
Convergence 2:
Recall
Definition: distance function
51
Application to Signal Recovery
unknown signal
Gaussian noisedegradation
observation model:
first stage problem:
priornumerical rangedata-fidelity
hierarchical convex optimization problem:
non-strictly convex
another prior
to specify
a better solution
Definition: indicator function
52
Application to Signal Recovery
unknown signal
Gaussian noisedegradation
observation model:
first stage problem:
hierarchical convex optimization problem:
non-strictly convex
another prior
to specify
a better solution
Definition: indicator function
53
Experimental Results
original
observed
no-
hierarchical
proposed
54
General Conclusion
Chap. 3 Image restoration with component-wise
use of priors
Chap. 4 Blockwise low-rank prior for cartoon-texture
image decomposition and restoration
Chap. 5 Priors for color artifact reduction
in image restoration
Chap. 6 A hierarchical convex optimization algorithm
with primal-dual splitting
Chap. 7 An efficient algorithm for signal recovery with
sophisticated data-fidelity constraints
priors: to model signal-specific properties
algorithms: to deal with involved constraints
We have developed novel priors and algorithms for signal recovery.
Related Publications
55
# Journal Papers
[J1] S. Ono, T. Miyata, I. Yamada, and K. Yamaoka, "Image Recovery by
Decomposition with Component-Wise Regularization,"
IEICE Trans. Fundamentals, vol. E95-A, no. 12, pp. 2470-2478, 2012.
(Best Paper Award from IEICE)
[J2] S. Ono, T. Miyata, and I. Yamada, "Cartoon-Texture Image Decomposition
Using Blockwise Low-Rank Texture Characterization,"
IEEE Trans. Image Process., vol. 23, no. 3, pp. 1028-1042, 2014.
[J3] S. Ono and I. Yamada, "Hierarchical Convex Optimization with Primal-Dual
Splitting,“ submitted to IEEE Trans. Signal Process (accepted conditionally
in May. 2014).
[J4] S. Ono and I. Yamada, "Signal Recovery Using Complicated Data-Fidelity
Constraints,“ in preparation.
Related Publications
56
# Articles in Proceedings of International Conferences (reviewed)
[C1] S. Ono, T. Miyata, and K. Yamaoka, "Total Variation-Wavelet-Curvelet
Regularized Optimization for Image Restoration," IEEE ICIP 2011.
[C2] S. Ono, T. Miyata, I. Yamada, and K. Yamaoka, "Missing Region Recovery by
Promoting Blockwise Low-Rankness," IEEE ICASSP 2012.
[C3] S. Ono and I. Yamada, "A Hierarchical Convex Optimization Approach for High
Fidelity Solution Selection in Image Recovery,'' APSIPA ASC 2012, (Invited).
[C4] S. Ono and I. Yamada, "Poisson Image Restoration with Likelihood Constraint
via Hybrid Steepest Descent Method," IEEE ICASSP 2013.
[C5] S. Ono, M. Yamagishi, and I. Yamada, "A Sparse System Identification by Using
Adaptively-Weighted Total Variation via A Primal-Dual Splitting Approach,"
IEEE ICASSP 2013.
[C6] S. Ono and I. Yamada, "A Convex Regularizer for Reducing Color Artifact in
Color Image Recovery,“ IEEE Conf. CVPR 2013.
[C7] I. Yamada and S. Ono, "Signal Recovery by Minimizing The Moreau Envelope
over The Fixed Point Set of Nonexpansive Mappings," EUSIPCO 2013, (invited).
[C8] S. Ono and I. Yamada, “Second-Order Total Generalized Variation Constraint,”
IEEE ICASSP 2014.
[C9] S. Ono and I. Yamada, “Decorrelated Vectorial Total Variation,” IEEE Conf. CVPR
2014 (to appear).
Other Publications
57
# Journal Papers
[J5] S. Ono, T. Miyata, and Y. Sakai, "Improvement of Colorization Based Coding by
Using Redundancy of The Color Assignment Information and Correct Color
Component," IEICE Trans. Information and Systems, vol. J93-D, no. 9, pp.
1638-1641, 2010 (in Japanese).
[J6] H. Kuroda, S. Ono, M. Yamagishi, and I. Yamada, "Exploiting Group Sparsity in
Nonlinear Acoustic Echo Cancellation by Adaptive Proximal Forward-Backward
Splitting," IEICE Trans. Fundamentals, vol.E96-A, no.10, pp.1918-1927, 2013.
[J7] T. Baba, R. Matsuoka, S. Ono, K. Shirai, and M. Okuda, "Image Composition Using
A Pair of Flash/No-Flash Images by Convex Optimization,“ IEICE Transactions on
Information and System, 2014 (in Japanese, to appear)
Other Publications
58
# Articles in Proceedings of International Conference (reviewed)
[C10] S. Ono, T. Miyata, and Y. Sakai, "Colorization-Based Coding by Focusing on
Characteristics of Colorization Bases," PCS 2010.
[C11] M. Yamagishi, S. Ono, and I. Yamada, "Two Variants of Alternating Direction
Method of Multipliers without Inner Iterations and Their Application to Image
Super-Resolution,'' IEEE ICASSP 2012.
[C12] S. Ono and I. Yamada, "Optimized JPEG Image Decompression with Super-
Resolution Interpolation Using Multi-Order Total Variation," IEEE ICIP 2013
(top 10% of all accepted papers).
[C13] K. Toyokawa, S. Ono, M. Yamagishi, and I. Yamada, "Detecting Edges of
Reflections from a Single Image via Convex Optimization,“ IEEE ICASSP 2014.
[C14] T. Baba, R. Matsuoka, S. Ono, K. Shirai, and M. Okuda, "Flash/No-flash Image
Integration Using Convex Optimization,“ IEEE ICASSP 2014.
* Many other articles in proceedings of domestic conferences

Weitere ähnliche Inhalte

Was ist angesagt?

Skip Connection まとめ(Neural Network)
Skip Connection まとめ(Neural Network)Skip Connection まとめ(Neural Network)
Skip Connection まとめ(Neural Network)Yamato OKAMOTO
 
【DL輪読会】Perceiver io a general architecture for structured inputs & outputs
【DL輪読会】Perceiver io  a general architecture for structured inputs & outputs 【DL輪読会】Perceiver io  a general architecture for structured inputs & outputs
【DL輪読会】Perceiver io a general architecture for structured inputs & outputs Deep Learning JP
 
調波打撃音分離の時間周波数マスクを用いた線形ブラインド音源分離
調波打撃音分離の時間周波数マスクを用いた線形ブラインド音源分離調波打撃音分離の時間周波数マスクを用いた線形ブラインド音源分離
調波打撃音分離の時間周波数マスクを用いた線形ブラインド音源分離Kitamura Laboratory
 
音源分離における音響モデリング(Acoustic modeling in audio source separation)
音源分離における音響モデリング(Acoustic modeling in audio source separation)音源分離における音響モデリング(Acoustic modeling in audio source separation)
音源分離における音響モデリング(Acoustic modeling in audio source separation)Daichi Kitamura
 
【DL輪読会】言語以外でのTransformerのまとめ (ViT, Perceiver, Frozen Pretrained Transformer etc)
【DL輪読会】言語以外でのTransformerのまとめ (ViT, Perceiver, Frozen Pretrained Transformer etc)【DL輪読会】言語以外でのTransformerのまとめ (ViT, Perceiver, Frozen Pretrained Transformer etc)
【DL輪読会】言語以外でのTransformerのまとめ (ViT, Perceiver, Frozen Pretrained Transformer etc)Deep Learning JP
 
深層学習の数理
深層学習の数理深層学習の数理
深層学習の数理Taiji Suzuki
 
[DL輪読会]Wav2CLIP: Learning Robust Audio Representations From CLIP
[DL輪読会]Wav2CLIP: Learning Robust Audio Representations From CLIP[DL輪読会]Wav2CLIP: Learning Robust Audio Representations From CLIP
[DL輪読会]Wav2CLIP: Learning Robust Audio Representations From CLIPDeep Learning JP
 
信号処理・画像処理における凸最適化
信号処理・画像処理における凸最適化信号処理・画像処理における凸最適化
信号処理・画像処理における凸最適化Shunsuke Ono
 
PRML学習者から入る深層生成モデル入門
PRML学習者から入る深層生成モデル入門PRML学習者から入る深層生成モデル入門
PRML学習者から入る深層生成モデル入門tmtm otm
 
独立低ランク行列分析に基づく音源分離とその発展(Audio source separation based on independent low-rank...
独立低ランク行列分析に基づく音源分離とその発展(Audio source separation based on independent low-rank...独立低ランク行列分析に基づく音源分離とその発展(Audio source separation based on independent low-rank...
独立低ランク行列分析に基づく音源分離とその発展(Audio source separation based on independent low-rank...Daichi Kitamura
 
[DL輪読会]GLIDE: Guided Language to Image Diffusion for Generation and Editing
[DL輪読会]GLIDE: Guided Language to Image Diffusion  for Generation and Editing[DL輪読会]GLIDE: Guided Language to Image Diffusion  for Generation and Editing
[DL輪読会]GLIDE: Guided Language to Image Diffusion for Generation and EditingDeep Learning JP
 
SSII2020TS: 機械学習モデルの判断根拠の説明​ 〜 Explainable AI 研究の近年の展開 〜​
SSII2020TS: 機械学習モデルの判断根拠の説明​ 〜 Explainable AI 研究の近年の展開 〜​SSII2020TS: 機械学習モデルの判断根拠の説明​ 〜 Explainable AI 研究の近年の展開 〜​
SSII2020TS: 機械学習モデルの判断根拠の説明​ 〜 Explainable AI 研究の近年の展開 〜​SSII
 
深層学習を利用した音声強調
深層学習を利用した音声強調深層学習を利用した音声強調
深層学習を利用した音声強調Yuma Koizumi
 
[DL輪読会]When Does Label Smoothing Help?
[DL輪読会]When Does Label Smoothing Help?[DL輪読会]When Does Label Smoothing Help?
[DL輪読会]When Does Label Smoothing Help?Deep Learning JP
 
猫でも分かるVariational AutoEncoder
猫でも分かるVariational AutoEncoder猫でも分かるVariational AutoEncoder
猫でも分かるVariational AutoEncoderSho Tatsuno
 
Interspeech2022 参加報告
Interspeech2022 参加報告Interspeech2022 参加報告
Interspeech2022 参加報告Yuki Saito
 
ConvNetの歴史とResNet亜種、ベストプラクティス
ConvNetの歴史とResNet亜種、ベストプラクティスConvNetの歴史とResNet亜種、ベストプラクティス
ConvNetの歴史とResNet亜種、ベストプラクティスYusuke Uchida
 
複素ラプラス分布に基づく非負値行列因子分解
複素ラプラス分布に基づく非負値行列因子分解複素ラプラス分布に基づく非負値行列因子分解
複素ラプラス分布に基づく非負値行列因子分解Hiroki_Tanji
 
Sparse Codingをなるべく数式を使わず理解する(PCAやICAとの関係)
Sparse Codingをなるべく数式を使わず理解する(PCAやICAとの関係)Sparse Codingをなるべく数式を使わず理解する(PCAやICAとの関係)
Sparse Codingをなるべく数式を使わず理解する(PCAやICAとの関係)Teppei Kurita
 

Was ist angesagt? (20)

Skip Connection まとめ(Neural Network)
Skip Connection まとめ(Neural Network)Skip Connection まとめ(Neural Network)
Skip Connection まとめ(Neural Network)
 
【DL輪読会】Perceiver io a general architecture for structured inputs & outputs
【DL輪読会】Perceiver io  a general architecture for structured inputs & outputs 【DL輪読会】Perceiver io  a general architecture for structured inputs & outputs
【DL輪読会】Perceiver io a general architecture for structured inputs & outputs
 
調波打撃音分離の時間周波数マスクを用いた線形ブラインド音源分離
調波打撃音分離の時間周波数マスクを用いた線形ブラインド音源分離調波打撃音分離の時間周波数マスクを用いた線形ブラインド音源分離
調波打撃音分離の時間周波数マスクを用いた線形ブラインド音源分離
 
音源分離における音響モデリング(Acoustic modeling in audio source separation)
音源分離における音響モデリング(Acoustic modeling in audio source separation)音源分離における音響モデリング(Acoustic modeling in audio source separation)
音源分離における音響モデリング(Acoustic modeling in audio source separation)
 
【DL輪読会】言語以外でのTransformerのまとめ (ViT, Perceiver, Frozen Pretrained Transformer etc)
【DL輪読会】言語以外でのTransformerのまとめ (ViT, Perceiver, Frozen Pretrained Transformer etc)【DL輪読会】言語以外でのTransformerのまとめ (ViT, Perceiver, Frozen Pretrained Transformer etc)
【DL輪読会】言語以外でのTransformerのまとめ (ViT, Perceiver, Frozen Pretrained Transformer etc)
 
深層学習の数理
深層学習の数理深層学習の数理
深層学習の数理
 
[DL輪読会]Wav2CLIP: Learning Robust Audio Representations From CLIP
[DL輪読会]Wav2CLIP: Learning Robust Audio Representations From CLIP[DL輪読会]Wav2CLIP: Learning Robust Audio Representations From CLIP
[DL輪読会]Wav2CLIP: Learning Robust Audio Representations From CLIP
 
信号処理・画像処理における凸最適化
信号処理・画像処理における凸最適化信号処理・画像処理における凸最適化
信号処理・画像処理における凸最適化
 
PRML学習者から入る深層生成モデル入門
PRML学習者から入る深層生成モデル入門PRML学習者から入る深層生成モデル入門
PRML学習者から入る深層生成モデル入門
 
独立低ランク行列分析に基づく音源分離とその発展(Audio source separation based on independent low-rank...
独立低ランク行列分析に基づく音源分離とその発展(Audio source separation based on independent low-rank...独立低ランク行列分析に基づく音源分離とその発展(Audio source separation based on independent low-rank...
独立低ランク行列分析に基づく音源分離とその発展(Audio source separation based on independent low-rank...
 
[DL輪読会]GLIDE: Guided Language to Image Diffusion for Generation and Editing
[DL輪読会]GLIDE: Guided Language to Image Diffusion  for Generation and Editing[DL輪読会]GLIDE: Guided Language to Image Diffusion  for Generation and Editing
[DL輪読会]GLIDE: Guided Language to Image Diffusion for Generation and Editing
 
SSII2020TS: 機械学習モデルの判断根拠の説明​ 〜 Explainable AI 研究の近年の展開 〜​
SSII2020TS: 機械学習モデルの判断根拠の説明​ 〜 Explainable AI 研究の近年の展開 〜​SSII2020TS: 機械学習モデルの判断根拠の説明​ 〜 Explainable AI 研究の近年の展開 〜​
SSII2020TS: 機械学習モデルの判断根拠の説明​ 〜 Explainable AI 研究の近年の展開 〜​
 
深層学習を利用した音声強調
深層学習を利用した音声強調深層学習を利用した音声強調
深層学習を利用した音声強調
 
[DL輪読会]When Does Label Smoothing Help?
[DL輪読会]When Does Label Smoothing Help?[DL輪読会]When Does Label Smoothing Help?
[DL輪読会]When Does Label Smoothing Help?
 
猫でも分かるVariational AutoEncoder
猫でも分かるVariational AutoEncoder猫でも分かるVariational AutoEncoder
猫でも分かるVariational AutoEncoder
 
Interspeech2022 参加報告
Interspeech2022 参加報告Interspeech2022 参加報告
Interspeech2022 参加報告
 
ConvNetの歴史とResNet亜種、ベストプラクティス
ConvNetの歴史とResNet亜種、ベストプラクティスConvNetの歴史とResNet亜種、ベストプラクティス
ConvNetの歴史とResNet亜種、ベストプラクティス
 
複素ラプラス分布に基づく非負値行列因子分解
複素ラプラス分布に基づく非負値行列因子分解複素ラプラス分布に基づく非負値行列因子分解
複素ラプラス分布に基づく非負値行列因子分解
 
Sparse Codingをなるべく数式を使わず理解する(PCAやICAとの関係)
Sparse Codingをなるべく数式を使わず理解する(PCAやICAとの関係)Sparse Codingをなるべく数式を使わず理解する(PCAやICAとの関係)
Sparse Codingをなるべく数式を使わず理解する(PCAやICAとの関係)
 
リプシッツ連続性に基づく勾配法・ニュートン型手法の計算量解析
リプシッツ連続性に基づく勾配法・ニュートン型手法の計算量解析リプシッツ連続性に基づく勾配法・ニュートン型手法の計算量解析
リプシッツ連続性に基づく勾配法・ニュートン型手法の計算量解析
 

Andere mochten auch

Robust Adaptive Beamforming for Antenna Array
Robust Adaptive Beamforming for Antenna ArrayRobust Adaptive Beamforming for Antenna Array
Robust Adaptive Beamforming for Antenna ArrayDr. Ayman Elnashar, PhD
 
Tensor Train decomposition in machine learning
Tensor Train decomposition in machine learningTensor Train decomposition in machine learning
Tensor Train decomposition in machine learningAlexander Novikov
 
Convex Optimization Modelling with CVXOPT
Convex Optimization Modelling with CVXOPTConvex Optimization Modelling with CVXOPT
Convex Optimization Modelling with CVXOPTandrewmart11
 
英語の組み立て方と学び方―高校英語へのステップアップ,その先へ
英語の組み立て方と学び方―高校英語へのステップアップ,その先へ英語の組み立て方と学び方―高校英語へのステップアップ,その先へ
英語の組み立て方と学び方―高校英語へのステップアップ,その先へThun der
 
Generalization of Tensor Factorization and Applications
Generalization of Tensor Factorization and ApplicationsGeneralization of Tensor Factorization and Applications
Generalization of Tensor Factorization and ApplicationsKohei Hayashi
 
Tips on how to defend your thesis
Tips on how to defend your thesisTips on how to defend your thesis
Tips on how to defend your thesisMiriam Pananaliksik
 
Dissertation oral defense presentation
Dissertation   oral defense presentationDissertation   oral defense presentation
Dissertation oral defense presentationDr. Naomi Mangatu
 
How to Defend your Thesis Proposal like a Professional
How to Defend your Thesis Proposal like a ProfessionalHow to Defend your Thesis Proposal like a Professional
How to Defend your Thesis Proposal like a ProfessionalMiriam College
 
Powerpoint Presentation of PhD Viva
Powerpoint Presentation of PhD VivaPowerpoint Presentation of PhD Viva
Powerpoint Presentation of PhD VivaDr Mohan Savade
 
Prepare your Ph.D. Defense Presentation
Prepare your Ph.D. Defense PresentationPrepare your Ph.D. Defense Presentation
Prepare your Ph.D. Defense PresentationChristian Glahn
 
見やすいプレゼン資料の作り方 - リニューアル増量版
見やすいプレゼン資料の作り方 - リニューアル増量版見やすいプレゼン資料の作り方 - リニューアル増量版
見やすいプレゼン資料の作り方 - リニューアル増量版MOCKS | Yuta Morishige
 

Andere mochten auch (12)

Robust Adaptive Beamforming for Antenna Array
Robust Adaptive Beamforming for Antenna ArrayRobust Adaptive Beamforming for Antenna Array
Robust Adaptive Beamforming for Antenna Array
 
Tensor Train decomposition in machine learning
Tensor Train decomposition in machine learningTensor Train decomposition in machine learning
Tensor Train decomposition in machine learning
 
大規模凸最適化問題に対する勾配法
大規模凸最適化問題に対する勾配法大規模凸最適化問題に対する勾配法
大規模凸最適化問題に対する勾配法
 
Convex Optimization Modelling with CVXOPT
Convex Optimization Modelling with CVXOPTConvex Optimization Modelling with CVXOPT
Convex Optimization Modelling with CVXOPT
 
英語の組み立て方と学び方―高校英語へのステップアップ,その先へ
英語の組み立て方と学び方―高校英語へのステップアップ,その先へ英語の組み立て方と学び方―高校英語へのステップアップ,その先へ
英語の組み立て方と学び方―高校英語へのステップアップ,その先へ
 
Generalization of Tensor Factorization and Applications
Generalization of Tensor Factorization and ApplicationsGeneralization of Tensor Factorization and Applications
Generalization of Tensor Factorization and Applications
 
Tips on how to defend your thesis
Tips on how to defend your thesisTips on how to defend your thesis
Tips on how to defend your thesis
 
Dissertation oral defense presentation
Dissertation   oral defense presentationDissertation   oral defense presentation
Dissertation oral defense presentation
 
How to Defend your Thesis Proposal like a Professional
How to Defend your Thesis Proposal like a ProfessionalHow to Defend your Thesis Proposal like a Professional
How to Defend your Thesis Proposal like a Professional
 
Powerpoint Presentation of PhD Viva
Powerpoint Presentation of PhD VivaPowerpoint Presentation of PhD Viva
Powerpoint Presentation of PhD Viva
 
Prepare your Ph.D. Defense Presentation
Prepare your Ph.D. Defense PresentationPrepare your Ph.D. Defense Presentation
Prepare your Ph.D. Defense Presentation
 
見やすいプレゼン資料の作り方 - リニューアル増量版
見やすいプレゼン資料の作り方 - リニューアル増量版見やすいプレゼン資料の作り方 - リニューアル増量版
見やすいプレゼン資料の作り方 - リニューアル増量版
 

Ähnlich wie A Study of Priors and Algorithms for Signal Recovery Using Convex Optimization

An Approach for Image Deblurring: Based on Sparse Representation and Regulari...
An Approach for Image Deblurring: Based on Sparse Representation and Regulari...An Approach for Image Deblurring: Based on Sparse Representation and Regulari...
An Approach for Image Deblurring: Based on Sparse Representation and Regulari...IRJET Journal
 
PES ncetec conference
PES ncetec conferencePES ncetec conference
PES ncetec conferenceAvinash P M
 
An Approach for Image Deblurring: Based on Sparse Representation and Regulari...
An Approach for Image Deblurring: Based on Sparse Representation and Regulari...An Approach for Image Deblurring: Based on Sparse Representation and Regulari...
An Approach for Image Deblurring: Based on Sparse Representation and Regulari...IRJET Journal
 
Alternating direction-method-for-image-restoration
Alternating direction-method-for-image-restorationAlternating direction-method-for-image-restoration
Alternating direction-method-for-image-restorationPrashant Pal
 
State of art pde based ip to bt vijayakrishna rowthu
State of art pde based ip to bt  vijayakrishna rowthuState of art pde based ip to bt  vijayakrishna rowthu
State of art pde based ip to bt vijayakrishna rowthuvijayakrishna rowthu
 
Performance of Efficient Closed-Form Solution to Comprehensive Frontier Exposure
Performance of Efficient Closed-Form Solution to Comprehensive Frontier ExposurePerformance of Efficient Closed-Form Solution to Comprehensive Frontier Exposure
Performance of Efficient Closed-Form Solution to Comprehensive Frontier Exposureiosrjce
 
Dissertation synopsis for imagedenoising(noise reduction )using non local me...
Dissertation synopsis for  imagedenoising(noise reduction )using non local me...Dissertation synopsis for  imagedenoising(noise reduction )using non local me...
Dissertation synopsis for imagedenoising(noise reduction )using non local me...Arti Singh
 
Image Restoration UsingNonlocally Centralized Sparse Representation and histo...
Image Restoration UsingNonlocally Centralized Sparse Representation and histo...Image Restoration UsingNonlocally Centralized Sparse Representation and histo...
Image Restoration UsingNonlocally Centralized Sparse Representation and histo...IJERA Editor
 
Image enhancement
Image enhancementImage enhancement
Image enhancementAyaelshiwi
 
Gil Shapira's Active Appearance Model slides
Gil Shapira's Active Appearance Model slidesGil Shapira's Active Appearance Model slides
Gil Shapira's Active Appearance Model slideswolf
 
Generating super resolution images using transformers
Generating super resolution images using transformersGenerating super resolution images using transformers
Generating super resolution images using transformersNEERAJ BAGHEL
 
Rethinking Data Augmentation for Image Super-resolution: A Comprehensive Anal...
Rethinking Data Augmentation for Image Super-resolution: A Comprehensive Anal...Rethinking Data Augmentation for Image Super-resolution: A Comprehensive Anal...
Rethinking Data Augmentation for Image Super-resolution: A Comprehensive Anal...JaeJun Yoo
 
Image enhancement in the spatial domain1
Image enhancement in the spatial domain1Image enhancement in the spatial domain1
Image enhancement in the spatial domain1shabanam tamboli
 
Image Enhancement in the Spatial Domain1.ppt
Image Enhancement in the Spatial Domain1.pptImage Enhancement in the Spatial Domain1.ppt
Image Enhancement in the Spatial Domain1.pptShabanamTamboli1
 
Digital image processing questions
Digital  image processing questionsDigital  image processing questions
Digital image processing questionsManas Mantri
 

Ähnlich wie A Study of Priors and Algorithms for Signal Recovery Using Convex Optimization (20)

An Approach for Image Deblurring: Based on Sparse Representation and Regulari...
An Approach for Image Deblurring: Based on Sparse Representation and Regulari...An Approach for Image Deblurring: Based on Sparse Representation and Regulari...
An Approach for Image Deblurring: Based on Sparse Representation and Regulari...
 
PES ncetec conference
PES ncetec conferencePES ncetec conference
PES ncetec conference
 
G04654247
G04654247G04654247
G04654247
 
An Approach for Image Deblurring: Based on Sparse Representation and Regulari...
An Approach for Image Deblurring: Based on Sparse Representation and Regulari...An Approach for Image Deblurring: Based on Sparse Representation and Regulari...
An Approach for Image Deblurring: Based on Sparse Representation and Regulari...
 
Alternating direction-method-for-image-restoration
Alternating direction-method-for-image-restorationAlternating direction-method-for-image-restoration
Alternating direction-method-for-image-restoration
 
State of art pde based ip to bt vijayakrishna rowthu
State of art pde based ip to bt  vijayakrishna rowthuState of art pde based ip to bt  vijayakrishna rowthu
State of art pde based ip to bt vijayakrishna rowthu
 
Performance of Efficient Closed-Form Solution to Comprehensive Frontier Exposure
Performance of Efficient Closed-Form Solution to Comprehensive Frontier ExposurePerformance of Efficient Closed-Form Solution to Comprehensive Frontier Exposure
Performance of Efficient Closed-Form Solution to Comprehensive Frontier Exposure
 
I010634450
I010634450I010634450
I010634450
 
Adaptive Spectral Projection
Adaptive Spectral ProjectionAdaptive Spectral Projection
Adaptive Spectral Projection
 
Dissertation synopsis for imagedenoising(noise reduction )using non local me...
Dissertation synopsis for  imagedenoising(noise reduction )using non local me...Dissertation synopsis for  imagedenoising(noise reduction )using non local me...
Dissertation synopsis for imagedenoising(noise reduction )using non local me...
 
Image Restoration UsingNonlocally Centralized Sparse Representation and histo...
Image Restoration UsingNonlocally Centralized Sparse Representation and histo...Image Restoration UsingNonlocally Centralized Sparse Representation and histo...
Image Restoration UsingNonlocally Centralized Sparse Representation and histo...
 
Image enhancement
Image enhancementImage enhancement
Image enhancement
 
Gil Shapira's Active Appearance Model slides
Gil Shapira's Active Appearance Model slidesGil Shapira's Active Appearance Model slides
Gil Shapira's Active Appearance Model slides
 
Generating super resolution images using transformers
Generating super resolution images using transformersGenerating super resolution images using transformers
Generating super resolution images using transformers
 
JPEG Image Compression
JPEG Image CompressionJPEG Image Compression
JPEG Image Compression
 
Seminarpaper
SeminarpaperSeminarpaper
Seminarpaper
 
Rethinking Data Augmentation for Image Super-resolution: A Comprehensive Anal...
Rethinking Data Augmentation for Image Super-resolution: A Comprehensive Anal...Rethinking Data Augmentation for Image Super-resolution: A Comprehensive Anal...
Rethinking Data Augmentation for Image Super-resolution: A Comprehensive Anal...
 
Image enhancement in the spatial domain1
Image enhancement in the spatial domain1Image enhancement in the spatial domain1
Image enhancement in the spatial domain1
 
Image Enhancement in the Spatial Domain1.ppt
Image Enhancement in the Spatial Domain1.pptImage Enhancement in the Spatial Domain1.ppt
Image Enhancement in the Spatial Domain1.ppt
 
Digital image processing questions
Digital  image processing questionsDigital  image processing questions
Digital image processing questions
 

Kürzlich hochgeladen

High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur EscortsHigh Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur EscortsCall Girls in Nagpur High Profile
 
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...ranjana rawat
 
UNIT - IV - Air Compressors and its Performance
UNIT - IV - Air Compressors and its PerformanceUNIT - IV - Air Compressors and its Performance
UNIT - IV - Air Compressors and its Performancesivaprakash250
 
Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...
Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...
Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...Christo Ananth
 
AKTU Computer Networks notes --- Unit 3.pdf
AKTU Computer Networks notes ---  Unit 3.pdfAKTU Computer Networks notes ---  Unit 3.pdf
AKTU Computer Networks notes --- Unit 3.pdfankushspencer015
 
Introduction to Multiple Access Protocol.pptx
Introduction to Multiple Access Protocol.pptxIntroduction to Multiple Access Protocol.pptx
Introduction to Multiple Access Protocol.pptxupamatechverse
 
Top Rated Pune Call Girls Budhwar Peth ⟟ 6297143586 ⟟ Call Me For Genuine Se...
Top Rated  Pune Call Girls Budhwar Peth ⟟ 6297143586 ⟟ Call Me For Genuine Se...Top Rated  Pune Call Girls Budhwar Peth ⟟ 6297143586 ⟟ Call Me For Genuine Se...
Top Rated Pune Call Girls Budhwar Peth ⟟ 6297143586 ⟟ Call Me For Genuine Se...Call Girls in Nagpur High Profile
 
Introduction to IEEE STANDARDS and its different types.pptx
Introduction to IEEE STANDARDS and its different types.pptxIntroduction to IEEE STANDARDS and its different types.pptx
Introduction to IEEE STANDARDS and its different types.pptxupamatechverse
 
Coefficient of Thermal Expansion and their Importance.pptx
Coefficient of Thermal Expansion and their Importance.pptxCoefficient of Thermal Expansion and their Importance.pptx
Coefficient of Thermal Expansion and their Importance.pptxAsutosh Ranjan
 
University management System project report..pdf
University management System project report..pdfUniversity management System project report..pdf
University management System project report..pdfKamal Acharya
 
KubeKraft presentation @CloudNativeHooghly
KubeKraft presentation @CloudNativeHooghlyKubeKraft presentation @CloudNativeHooghly
KubeKraft presentation @CloudNativeHooghlysanyuktamishra911
 
MANUFACTURING PROCESS-II UNIT-1 THEORY OF METAL CUTTING
MANUFACTURING PROCESS-II UNIT-1 THEORY OF METAL CUTTINGMANUFACTURING PROCESS-II UNIT-1 THEORY OF METAL CUTTING
MANUFACTURING PROCESS-II UNIT-1 THEORY OF METAL CUTTINGSIVASHANKAR N
 
Call Girls in Nagpur Suman Call 7001035870 Meet With Nagpur Escorts
Call Girls in Nagpur Suman Call 7001035870 Meet With Nagpur EscortsCall Girls in Nagpur Suman Call 7001035870 Meet With Nagpur Escorts
Call Girls in Nagpur Suman Call 7001035870 Meet With Nagpur EscortsCall Girls in Nagpur High Profile
 
Processing & Properties of Floor and Wall Tiles.pptx
Processing & Properties of Floor and Wall Tiles.pptxProcessing & Properties of Floor and Wall Tiles.pptx
Processing & Properties of Floor and Wall Tiles.pptxpranjaldaimarysona
 
Call Girls Pimpri Chinchwad Call Me 7737669865 Budget Friendly No Advance Boo...
Call Girls Pimpri Chinchwad Call Me 7737669865 Budget Friendly No Advance Boo...Call Girls Pimpri Chinchwad Call Me 7737669865 Budget Friendly No Advance Boo...
Call Girls Pimpri Chinchwad Call Me 7737669865 Budget Friendly No Advance Boo...roncy bisnoi
 
UNIT-II FMM-Flow Through Circular Conduits
UNIT-II FMM-Flow Through Circular ConduitsUNIT-II FMM-Flow Through Circular Conduits
UNIT-II FMM-Flow Through Circular Conduitsrknatarajan
 
BSides Seattle 2024 - Stopping Ethan Hunt From Taking Your Data.pptx
BSides Seattle 2024 - Stopping Ethan Hunt From Taking Your Data.pptxBSides Seattle 2024 - Stopping Ethan Hunt From Taking Your Data.pptx
BSides Seattle 2024 - Stopping Ethan Hunt From Taking Your Data.pptxfenichawla
 
MANUFACTURING PROCESS-II UNIT-2 LATHE MACHINE
MANUFACTURING PROCESS-II UNIT-2 LATHE MACHINEMANUFACTURING PROCESS-II UNIT-2 LATHE MACHINE
MANUFACTURING PROCESS-II UNIT-2 LATHE MACHINESIVASHANKAR N
 
MANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLS
MANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLSMANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLS
MANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLSSIVASHANKAR N
 

Kürzlich hochgeladen (20)

High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur EscortsHigh Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
 
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
 
(INDIRA) Call Girl Aurangabad Call Now 8617697112 Aurangabad Escorts 24x7
(INDIRA) Call Girl Aurangabad Call Now 8617697112 Aurangabad Escorts 24x7(INDIRA) Call Girl Aurangabad Call Now 8617697112 Aurangabad Escorts 24x7
(INDIRA) Call Girl Aurangabad Call Now 8617697112 Aurangabad Escorts 24x7
 
UNIT - IV - Air Compressors and its Performance
UNIT - IV - Air Compressors and its PerformanceUNIT - IV - Air Compressors and its Performance
UNIT - IV - Air Compressors and its Performance
 
Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...
Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...
Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...
 
AKTU Computer Networks notes --- Unit 3.pdf
AKTU Computer Networks notes ---  Unit 3.pdfAKTU Computer Networks notes ---  Unit 3.pdf
AKTU Computer Networks notes --- Unit 3.pdf
 
Introduction to Multiple Access Protocol.pptx
Introduction to Multiple Access Protocol.pptxIntroduction to Multiple Access Protocol.pptx
Introduction to Multiple Access Protocol.pptx
 
Top Rated Pune Call Girls Budhwar Peth ⟟ 6297143586 ⟟ Call Me For Genuine Se...
Top Rated  Pune Call Girls Budhwar Peth ⟟ 6297143586 ⟟ Call Me For Genuine Se...Top Rated  Pune Call Girls Budhwar Peth ⟟ 6297143586 ⟟ Call Me For Genuine Se...
Top Rated Pune Call Girls Budhwar Peth ⟟ 6297143586 ⟟ Call Me For Genuine Se...
 
Introduction to IEEE STANDARDS and its different types.pptx
Introduction to IEEE STANDARDS and its different types.pptxIntroduction to IEEE STANDARDS and its different types.pptx
Introduction to IEEE STANDARDS and its different types.pptx
 
Coefficient of Thermal Expansion and their Importance.pptx
Coefficient of Thermal Expansion and their Importance.pptxCoefficient of Thermal Expansion and their Importance.pptx
Coefficient of Thermal Expansion and their Importance.pptx
 
University management System project report..pdf
University management System project report..pdfUniversity management System project report..pdf
University management System project report..pdf
 
KubeKraft presentation @CloudNativeHooghly
KubeKraft presentation @CloudNativeHooghlyKubeKraft presentation @CloudNativeHooghly
KubeKraft presentation @CloudNativeHooghly
 
MANUFACTURING PROCESS-II UNIT-1 THEORY OF METAL CUTTING
MANUFACTURING PROCESS-II UNIT-1 THEORY OF METAL CUTTINGMANUFACTURING PROCESS-II UNIT-1 THEORY OF METAL CUTTING
MANUFACTURING PROCESS-II UNIT-1 THEORY OF METAL CUTTING
 
Call Girls in Nagpur Suman Call 7001035870 Meet With Nagpur Escorts
Call Girls in Nagpur Suman Call 7001035870 Meet With Nagpur EscortsCall Girls in Nagpur Suman Call 7001035870 Meet With Nagpur Escorts
Call Girls in Nagpur Suman Call 7001035870 Meet With Nagpur Escorts
 
Processing & Properties of Floor and Wall Tiles.pptx
Processing & Properties of Floor and Wall Tiles.pptxProcessing & Properties of Floor and Wall Tiles.pptx
Processing & Properties of Floor and Wall Tiles.pptx
 
Call Girls Pimpri Chinchwad Call Me 7737669865 Budget Friendly No Advance Boo...
Call Girls Pimpri Chinchwad Call Me 7737669865 Budget Friendly No Advance Boo...Call Girls Pimpri Chinchwad Call Me 7737669865 Budget Friendly No Advance Boo...
Call Girls Pimpri Chinchwad Call Me 7737669865 Budget Friendly No Advance Boo...
 
UNIT-II FMM-Flow Through Circular Conduits
UNIT-II FMM-Flow Through Circular ConduitsUNIT-II FMM-Flow Through Circular Conduits
UNIT-II FMM-Flow Through Circular Conduits
 
BSides Seattle 2024 - Stopping Ethan Hunt From Taking Your Data.pptx
BSides Seattle 2024 - Stopping Ethan Hunt From Taking Your Data.pptxBSides Seattle 2024 - Stopping Ethan Hunt From Taking Your Data.pptx
BSides Seattle 2024 - Stopping Ethan Hunt From Taking Your Data.pptx
 
MANUFACTURING PROCESS-II UNIT-2 LATHE MACHINE
MANUFACTURING PROCESS-II UNIT-2 LATHE MACHINEMANUFACTURING PROCESS-II UNIT-2 LATHE MACHINE
MANUFACTURING PROCESS-II UNIT-2 LATHE MACHINE
 
MANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLS
MANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLSMANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLS
MANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLS
 

A Study of Priors and Algorithms for Signal Recovery Using Convex Optimization

  • 1. A Study of Priors and Algorithms for Signal Recovery by Convex Optimization Techniques Shunsuke Ono Yamada Lab. Dept. Communications and Integrated Systems Tokyo Institute of Technology 2014/06/12
  • 3. 3 Signal Recovery Problem Signal recovery is a fundamental problem in signal processing • signal reconstruction • image restoration • compressed sensing • tensor completion ... signal recovery problems = inverse problems of the form: observation Goal: estimate from and noise contamination linear degradation How to resolve this ill-posed/ill-conditioned problem? unknown signal
  • 4. 4 Prior and Convex Optimization Some a priori information on signal of interest, e.g., • sparsity • smoothness • low-rankness should be taken into consideration. desired signal convex function convex set 1. D. P. Palomar and Y. C. Eldar, Eds., Convex Optimization in Signal Processing and Communications, Cambridge University Press, 2009. 2. J.-L. Starck et al., Sparse Image and Signal Processing: Wavelets, Curvelets,Morphological Diversity. Cambridge University Press, 2010. 3. H. H. Bauschke et al., Eds., Fixed-Point Algorithm for Inverse Problems in Science and Engineering, Springer-Verlag, 2011. a-priori information convex function =: prior • l1-norm [Donoho+ ‘03; Candes+ ‘06] • total variation (TV) [Rudin+ ‘92; Chambolle ‘04] • nuclear norm [Fazel ‘02; Recht et al. ‘11] advantage: 1. local optimal = global optimal 2. flexible framework A powerful approach: convex optimization [see, e.g., 1-3]
  • 5. 5 Optimization Algorithms for Signal Recovery Optimization algorithms for signal recovery must deal with • useful priors = nonsmooth convex function • problem scale = often more than 10^4 proximal splitting methods [e.g., Gabay+ ‘76; Lions+ ‘79; Combettes+ ‘05; Condat ‘13] • first-order (without Hessian) • nonsmooth functions • multiple constraints Why do we need more? Useful priors Efficient algorithms
  • 6. Motivation & Goal 6 # prior: signal-specific properties are NOT fully exploited. => undesired results, e.g., texture degradation, color artifact, … # algorithm: CANNOT deal with sophisticated constraints. => only the intersection of projectable convex sets. Goal: design priors and algorithms to resolve them.
  • 7. 7 Structure of The Dissertation Chap. 1 General Introduction Chap. 2 Preliminaries Chap. 3 Image restoration with component-wise use of priors Chap. 4 Blockwise low-rank prior for cartoon-texture image decomposition and restoration Chap. 5 Priors for color artifact reduction in image restoration Chap. 6 A hierarchical convex optimization algorithm with primal-dual splitting Chap. 7 An efficient algorithm for signal recovery with sophisticated data-fidelity constraints Chap. 8 General conclusion Main chapters priors algorithms
  • 8. 8 Structure of The Dissertation Chap. 1 General Introduction Chap. 2 Preliminaries Chap. 3 Image restoration with component-wise use of priors Chap. 4 Blockwise low-rank prior for cartoon-texture image decomposition and restoration Chap. 5 Priors for color artifact reduction in image restoration Chap. 6 A hierarchical convex optimization algorithm with primal-dual splitting Chap. 7 An efficient algorithm for signal recovery with sophisticated data-fidelity constraints Chap. 8 General conclusion priors algorithms Main chapters
  • 9. 9 Chap. 4 Blockwise low-rank prior for cartoon-texture image decomposition and restoration
  • 11. Cartoon-Texture Decomposition Model 11 image cartoon texture Assumption: image = sum of two components optimization problem [Meyer ‘01; Vese+ ‘03; Aujol+ ’05; ~ Schaeffer+ ‘13 ] advantage: 1. prior suitable to each component 2. extraction of texture priors for each component data-fidelity to
  • 12. Cartoon-Texture Decomposition Model 12 image optimization problem [Meyer ‘01; Vese+ ‘03; Aujol+ ‘05; ~ Schaeffer+ ‘13 ] total variation (TV) [Rudin 92]: suitable for cartoon cartoon texture
  • 13. Cartoon-Texture Decomposition Model 13 image optimization problem [Meyer ‘01; Vese+ ‘03; Aujol+ ‘05; ~ Schaeffer+ ‘13 ] Texture is rather difficult to model… cartoon texture
  • 14. Existing Texture Priors 14 G norm frame 2001 ~ 2005 ~ 2013 noise fine pattern local adaptivity capability prior -> [Schaeffer+ ‘13][Meyer ‘01] [Aujol+ ‘05] [Ng+ ‘13] [Daubechies+ ‘05] [Elad+ ’05] [Fadili+ ‘10]
  • 15. Contribution 15 Propose a prior for a better interpretation of texture. 2001 ~ 2005 ~ 2013 Noise Fine pattern Local adaptivity Proposed prior G norm frame [Schaeffer+ ‘13][Meyer ‘01] [Aujol+ ‘05] [Ng+ ‘13] [Daubechies+ ‘05] [Elad+ ’05] [Fadili+ ‘10]
  • 16. SVD, Rank and Nuclear Norm 16 • singular value decomposition (SVD) nonzero singular values • number of nonzero singular values • nuclear norm tightest convex relaxation of rank [Fazel 02] * applications to robust PCA (sparse + low-rank) [Gandy & Yamada ‘10; Candes+ ‘11; Gandy, Recht, Yamada ‘11] rank nuclear norm
  • 18. How To Model Texture? 18 globally dissimilar but locally well-patterned Any block is approximately low-rank after suitable shear.
  • 19. Any block is approximately low-rank after suitable shear. Proposed Prior: Block Nuclear Norm (1/2) 19 Definition: pre-Block-nuclear-norm (pre-BNN) nuclear normpositive weight Important property of pre-BNN Pre-BNN is tightest convex relaxation of weighted blockwise rank * Generalization of [Fazel ‘02]
  • 20. Proposed Prior: Block Nuclear Norm (2/2) 20 Definition: Block Nuclear Norm (BNN) periodic expansion operator (overlap) shear operator Any block is approximately low-rank after suitable shear. BNN becomes small, i.e., good texture prior.
  • 21. Cartoon-Texture Decomposition Using BNN 21image cartoon texture • Patterns running in different directions are separately extracted. • Proximal splitting methods can solve the problem after reformulation. proposed cartoon-texture decomposition model texture (K=3) sub-texture 1 sub-texture 2 sub-texture 3 various shear angles
  • 22. 22 Experimental Results CASE 1: pure decomposition compared with a state-of-the-art decomposition [Schaeffer & Osher, 2013] image cartoon texture cartoon texture [Schaeffer & Osher 2013] “A low patch- rank interpretation of texture,” SIAM J. Imag. Sci. [Schaeffer & Osher 2013] proposed
  • 23. 23 Experimental Results CASE 2: blur+20%missing pixels compared also with [Schaeffer & Osher 2013] PSNR: 23.20 SSIM: 0.6613 PSNR: 23.75 SSIM: 0.6978 observation [Schaeffer & Osher 2013] proposed
  • 24. 24 Experimental Results CASE 2: blur+20%missing pixels Compared with a state-of-the-art decomposition [Schaeffer & Osher, 2013] PSNR: 23.20 SSIM: 0.6613 PSNR: 23.75 SSIM: 0.6978 observation [Schaeffer & Osher 2013] proposed
  • 25. 25 Chap. 5 Priors for color artifact reduction in image restoration
  • 27. Color Artifact in Image Restoration 27 restored by an existing prior original observation color artifact
  • 28. Color-Line Property 28color-line restored by an existing priororiginal corrupted # color-line: RGB entries are linearly distributed in local regions. [Omer & Werman ‘04]
  • 29. Contribution 29color-line original corrupted Propose a prior for promoting color-line property. reconstructed existing + proposed prior restored by an existing prior
  • 31. Mathematical Modeling of Color-Line 31 color image B G R -th local region (e.g., block) Vectorize matrix for -th local region Define matrices for every local region of a color image.
  • 32. color-line property  low-rankness of Proposed Prior: Local Color Nuclear Norm 32 number of local regions key principle rank( ) = 1exact cases Local Color Nuclear Norm (LCNN)
  • 33. Proposed Prior: Local Color Nuclear Norm 33 key principle color-line property  small singular values of practical cases rank( ) ≠ 1 but is small Suppressing LCNN promotes the color-line property. Local Color Nuclear Norm (LCNN)
  • 34. Application to Denoising 34 color-line Proximal splitting methods are applicable after reformulation. smoothness [VTV] dynamic range data-fidelity robust to Impulsive noise : color image contaminated by impulsive noise optimization problem [VTV] Bresson et al. “Fast dual minimization of the vectorial total variation norm and applications to color image processing”, Inverse Probl. Img., 2008.
  • 35. Experimental Results 35 observation VTV VTV+LCNN original 22.95, 7.59 24.30, 5.80 25.12, 3.07 27.22, 2.58 (PSNR, D2000) (PSNR, D2000)
  • 36. 36 Chap. 6 A hierarchical convex optimization algorithm with primal-dual splitting
  • 38. NOT uniqueUnique NOT strictly convexStrictly convex . 38 contains infinitely many solutions non-strict convexity of . Solutions of Convex Optimization Problems Solution set of a convex optimization problem Solutions could be considerably different in another criterion.
  • 39. 39 Hierarchical Convex Optimization ideal strategy: hierarchical convex optimization: highly involved (≠the intersection of projectable convex sets) proximal splitting methods cannot solve the problem. selector: smooth convex function via fixed point set characterization [e.g., Yamada ‘01; Ogura & Yamada‘03; Yamada, Yukawa, Yamagishi ‘11] Definition: nonexpansive mapping computable nonexpansive mapping on a certain Hilbert space
  • 40. 40 Hierarchical Convex Optimization fixed point set characterized problem Hybrid Steepest Descent Method (HSDM) [e.g., Yamada ‘01; Ogura & Yamada ‘03] nonexpansive mapping gradient of selector Q. What kinds of are available?
  • 41. 41 • Forward-Backward Splitting (FBS) method [Passty ’79; Combettes+ ‘05] • Douglas-Rachford Splitting (DRS) method [Lions+ ‘79; Combettes+ ‘07] Two characterizations underlying proximal splitting methods are given in [Yamada, Yukawa, Yamagishi ‘11]. Q. Can we deal with a more flexible formulation? Nonexpansive Mappings for Definition: proximity operator [Moreau ‘62]
  • 42. 42 • Forward-Backward Splitting (FBS) method [Passty ’79; Combettes+ ‘05] • Douglas-Rachford Splitting (DRS) method [Lions+ ’79; Combettes+ ‘07] • Primal-Dual Splitting (PDS) method [Condat ‘13; Vu ‘13] Nonexpansive Mappings for Two characterizations underlying proximal splitting methods are given in [Yamada, Yukawa, Yamagishi ‘11].
  • 43. 43 • Primal-Dual Splitting (PDS) method [Condat ‘13; Vu ‘13] Contribution • reveal convergence properties • modify gradient computation • extract operator-theoretic idea from [Condat 13] • reformulate in a certain product space incorporate hierarchical convex optimization by HSDM
  • 45. 45 Outline Reformulate in the canonical product space with dual problem Extract & incorporate fixed point set characterization from [Condat ‘13] Install another inner product for nonexpansivity of by [Condat ‘13] Apply HSDM with modified gradient computation w.r.t.
  • 46. 46 Reformulation in The Canonical Product Space solution set of the first stage problem (=primal problem) solution set of the dual problem of the first stage problem By letting Note:
  • 47. 47 Incorporation of PDS Characterization Extract the PDS fixed point characterization from [Condat ‘13]
  • 48. 48 Activation of Nonexpansivity is nonexpansive NOT on the canonical product space Definition: canonical inner product of BUT on the following space with another inner product [Condat ‘13] where : strongly positive bounded linear operator
  • 49. 49 Solver via HSDM NOTE: We can apply HSDM [e.g., Yamada ‘01; Ogura & Yamada ‘03]
  • 50. 50 Convergence of HSDM with PDS Assumptions: Convergence 1: Convergence 2: Recall Definition: distance function
  • 51. 51 Application to Signal Recovery unknown signal Gaussian noisedegradation observation model: first stage problem: priornumerical rangedata-fidelity hierarchical convex optimization problem: non-strictly convex another prior to specify a better solution Definition: indicator function
  • 52. 52 Application to Signal Recovery unknown signal Gaussian noisedegradation observation model: first stage problem: hierarchical convex optimization problem: non-strictly convex another prior to specify a better solution Definition: indicator function
  • 54. 54 General Conclusion Chap. 3 Image restoration with component-wise use of priors Chap. 4 Blockwise low-rank prior for cartoon-texture image decomposition and restoration Chap. 5 Priors for color artifact reduction in image restoration Chap. 6 A hierarchical convex optimization algorithm with primal-dual splitting Chap. 7 An efficient algorithm for signal recovery with sophisticated data-fidelity constraints priors: to model signal-specific properties algorithms: to deal with involved constraints We have developed novel priors and algorithms for signal recovery.
  • 55. Related Publications 55 # Journal Papers [J1] S. Ono, T. Miyata, I. Yamada, and K. Yamaoka, "Image Recovery by Decomposition with Component-Wise Regularization," IEICE Trans. Fundamentals, vol. E95-A, no. 12, pp. 2470-2478, 2012. (Best Paper Award from IEICE) [J2] S. Ono, T. Miyata, and I. Yamada, "Cartoon-Texture Image Decomposition Using Blockwise Low-Rank Texture Characterization," IEEE Trans. Image Process., vol. 23, no. 3, pp. 1028-1042, 2014. [J3] S. Ono and I. Yamada, "Hierarchical Convex Optimization with Primal-Dual Splitting,“ submitted to IEEE Trans. Signal Process (accepted conditionally in May. 2014). [J4] S. Ono and I. Yamada, "Signal Recovery Using Complicated Data-Fidelity Constraints,“ in preparation.
  • 56. Related Publications 56 # Articles in Proceedings of International Conferences (reviewed) [C1] S. Ono, T. Miyata, and K. Yamaoka, "Total Variation-Wavelet-Curvelet Regularized Optimization for Image Restoration," IEEE ICIP 2011. [C2] S. Ono, T. Miyata, I. Yamada, and K. Yamaoka, "Missing Region Recovery by Promoting Blockwise Low-Rankness," IEEE ICASSP 2012. [C3] S. Ono and I. Yamada, "A Hierarchical Convex Optimization Approach for High Fidelity Solution Selection in Image Recovery,'' APSIPA ASC 2012, (Invited). [C4] S. Ono and I. Yamada, "Poisson Image Restoration with Likelihood Constraint via Hybrid Steepest Descent Method," IEEE ICASSP 2013. [C5] S. Ono, M. Yamagishi, and I. Yamada, "A Sparse System Identification by Using Adaptively-Weighted Total Variation via A Primal-Dual Splitting Approach," IEEE ICASSP 2013. [C6] S. Ono and I. Yamada, "A Convex Regularizer for Reducing Color Artifact in Color Image Recovery,“ IEEE Conf. CVPR 2013. [C7] I. Yamada and S. Ono, "Signal Recovery by Minimizing The Moreau Envelope over The Fixed Point Set of Nonexpansive Mappings," EUSIPCO 2013, (invited). [C8] S. Ono and I. Yamada, “Second-Order Total Generalized Variation Constraint,” IEEE ICASSP 2014. [C9] S. Ono and I. Yamada, “Decorrelated Vectorial Total Variation,” IEEE Conf. CVPR 2014 (to appear).
  • 57. Other Publications 57 # Journal Papers [J5] S. Ono, T. Miyata, and Y. Sakai, "Improvement of Colorization Based Coding by Using Redundancy of The Color Assignment Information and Correct Color Component," IEICE Trans. Information and Systems, vol. J93-D, no. 9, pp. 1638-1641, 2010 (in Japanese). [J6] H. Kuroda, S. Ono, M. Yamagishi, and I. Yamada, "Exploiting Group Sparsity in Nonlinear Acoustic Echo Cancellation by Adaptive Proximal Forward-Backward Splitting," IEICE Trans. Fundamentals, vol.E96-A, no.10, pp.1918-1927, 2013. [J7] T. Baba, R. Matsuoka, S. Ono, K. Shirai, and M. Okuda, "Image Composition Using A Pair of Flash/No-Flash Images by Convex Optimization,“ IEICE Transactions on Information and System, 2014 (in Japanese, to appear)
  • 58. Other Publications 58 # Articles in Proceedings of International Conference (reviewed) [C10] S. Ono, T. Miyata, and Y. Sakai, "Colorization-Based Coding by Focusing on Characteristics of Colorization Bases," PCS 2010. [C11] M. Yamagishi, S. Ono, and I. Yamada, "Two Variants of Alternating Direction Method of Multipliers without Inner Iterations and Their Application to Image Super-Resolution,'' IEEE ICASSP 2012. [C12] S. Ono and I. Yamada, "Optimized JPEG Image Decompression with Super- Resolution Interpolation Using Multi-Order Total Variation," IEEE ICIP 2013 (top 10% of all accepted papers). [C13] K. Toyokawa, S. Ono, M. Yamagishi, and I. Yamada, "Detecting Edges of Reflections from a Single Image via Convex Optimization,“ IEEE ICASSP 2014. [C14] T. Baba, R. Matsuoka, S. Ono, K. Shirai, and M. Okuda, "Flash/No-flash Image Integration Using Convex Optimization,“ IEEE ICASSP 2014. * Many other articles in proceedings of domestic conferences