SlideShare ist ein Scribd-Unternehmen logo
1 von 30
Manifold Alignment for MultitemporalHyperspectral Image Classification H. Lexie Yang1, Dr. Melba M. Crawford2 School of Civil Engineering, Purdue University and Laboratory for Applications of Remote Sensing Email: {hhyang1, mcrawford2}@purdue.edu July 29, 2011 IEEE International Geoscience and Remote Sensing Symposium
Outline Introduction Research Motivation Effective exploitation of information for multitemporal classification in nonstationary environments Goal:  Learn “representative” data manifold Proposed Approach Manifold alignment via given features Manifold alignment via correspondences Manifold alignment with spectral and spatial information Experimental Results Summary and Future Directions
Introduction N>>30 3 2 1 2001 2003 2004 2005 2006 2002 2001  N narrow spectral bands June July May May May May June Challenges for classification of hyperspectral data temporally nonstationary spectra high dimensionality
Research Motivation Nonstationarities in sequence of images  Spectra of same class      may evolve or drift over time Potential approaches Semi-supervised methods Adaptive schemes Exploit similar data geometries Explore data manifolds Good initial conditions required
Manifold Learning for Hyperspectral Data Characterize data geometry with manifold learning  To capture nonlinear structures  To recover intrinsic space (preserve spectral neighbors)   To reduce data dimensionality Classification performed in low dimensional space Original space Manifold space 3rd dim Spectral bands n Spatial dimension 6 5 4 3 2 1 Spatial dimension 1st dim 2nd dim
Challenges: Modeling Multitemporal Data ,[object Object],    due to spectra shift ,[object Object],Data manifold at T2 Data manifolds at T1 and T2  Data manifold at T1
Proposed Approach: Exploit Local Structure ,[object Object]
 Approach: Extract and optimally align local geometry    to minimize overall differencesLocality Spectral space at T2 Spectral space at T1
Proposed Approach: Conceptual Idea (Ham, 2005)
Proposed Approach: Manifold Alignment ,[object Object],Samples with class labels Samples with no class labels Joint manifold
Manifold Alignment: Introduction and     are 2 multitemporalhyperspectral images   Predict labels of     using labeled    Explore local geometries using graph Laplacian    and some form of prior information Define Graph Laplacian Twopotential forms of prior information: given features and pairwise correspondences [Ham et al. 2005]
Manifold Alignment via Given Features Minimize  Joint Manifold Given Features
Manifold Alignment via Pairwise Correspondences Minimize  Correspondences between     and  Joint Manifold
MA with spectral and spatial information Combine spatial locations with spectral signatures To improve local geometries (spectral) quality Idea: Increase similarity measure when two samples are close together Weight matrix for graph Laplacian: where spatial location of each pixel     is represented as
Experimental Results: Data ,[object Object]
May, June pair: Adjacent geographical area
June, July pair: Targeted the same areaMay       June           July
Experimental Results: Framework L L L I1, I2 I1 I2 Graph Laplacian Prior information Joint manifold Given features  Classification with KNN Correspondences Develop Data Manifold of Pooled Data
Manifold Learning for Feature Extraction Global methods consider geodesic distance    Isometric feature mapping (ISOMAP) Local methods consider pairwise Euclidian distance Locally Linear Embedding (LLE): (Saul and Roweis, 2000) Local Tangent Space Alignment (LTSA): (Zhang and Zha, 2004) LaplacianEigenmaps (LE): (Belkin and Niyogi, 2004) (Tenenbaum, 2000)
MA with Given Features Baseline: Joint manifold developed by pooled data 79.21 77.29 77.88 76.31 (May, June pair)
MA Results – Classification Accuracy ,[object Object],[object Object]
Summary and Future Directions Multitemporal spectral changes result in failure to provide a faithful data manifold  Manifold alignment framework demonstrates potential for nonstationary environment by utilizing similar local geometries and prior information Spatial proximity contributes to stabilization of local geometries for manifold alignment approaches Future directions Investigate alternative spatial and spectral integration strategy Address issue of  longer sequences of images
Thank you. Questions?
References J. Ham, D. D. Lee, and L. K. Saul, “Semisupervised alignment of manifolds,” in International Workshop on Artificial Intelligence and Statistics, August 2005.
Backup Slides
Local Manifold Learning for Feature Extraction (s,f) Local geometry preserved via various strategies for embedding Popular local manifold learning methods Locally Linear Embedding (LLE): (Saul and Roweis, 2000) Local Tangent Space Alignment (LTSA): (Zhang and Zha, 2004) LaplacianEigenmaps (LE): (Belkin and Niyogi, 2004) Pairwise distance between neighbors computed using Gaussian kernel function - O(pN2) method Embedding computed to minimize the total distance between neighbors
LE: Impact of Parameter Values  Parameter values for local embedding s obtained via grid search k, p obtained empirically BOT Class 3, 6 BOT Classes 1-9
[object Object],Alignment Results: Typical Class
[object Object],Alignment Results: Critical Class
Alignment Results: Critical Class Critical class: Woodlands

Weitere ähnliche Inhalte

Was ist angesagt?

Retraining maximum likelihood classifiers using low-rank model.ppt
Retraining maximum likelihood classifiers using low-rank model.pptRetraining maximum likelihood classifiers using low-rank model.ppt
Retraining maximum likelihood classifiers using low-rank model.pptgrssieee
 
Topological Data Analysis of Complex Spatial Systems
Topological Data Analysis of Complex Spatial SystemsTopological Data Analysis of Complex Spatial Systems
Topological Data Analysis of Complex Spatial SystemsMason Porter
 
Niche comparisons 201606 para curso Lichos
Niche comparisons 201606 para curso LichosNiche comparisons 201606 para curso Lichos
Niche comparisons 201606 para curso LichosTown Peterson
 
Classification of Multi-date Image using NDVI values
Classification of Multi-date Image using NDVI valuesClassification of Multi-date Image using NDVI values
Classification of Multi-date Image using NDVI valuesijsrd.com
 
Understanding Map Integration Using GIS Software Poster_ff
Understanding Map Integration Using GIS Software Poster_ffUnderstanding Map Integration Using GIS Software Poster_ff
Understanding Map Integration Using GIS Software Poster_ffMichelle Pasco
 
WEAKLY SUPERVISED FINE-GRAINED CATEGORIZATION WITH PART-BASED IMAGE REPRESENT...
WEAKLY SUPERVISED FINE-GRAINED CATEGORIZATION WITH PART-BASED IMAGE REPRESENT...WEAKLY SUPERVISED FINE-GRAINED CATEGORIZATION WITH PART-BASED IMAGE REPRESENT...
WEAKLY SUPERVISED FINE-GRAINED CATEGORIZATION WITH PART-BASED IMAGE REPRESENT...Nexgen Technology
 
Articulated human pose estimation by deep learning
Articulated human pose estimation by deep learningArticulated human pose estimation by deep learning
Articulated human pose estimation by deep learningWei Yang
 
Statistical global modeling of β^- decay halflives systematics ...
Statistical global modeling of β^- decay halflives systematics ...Statistical global modeling of β^- decay halflives systematics ...
Statistical global modeling of β^- decay halflives systematics ...butest
 
Direct non-linear inversion of multi-parameter 1D elastic media using the inv...
Direct non-linear inversion of multi-parameter 1D elastic media using the inv...Direct non-linear inversion of multi-parameter 1D elastic media using the inv...
Direct non-linear inversion of multi-parameter 1D elastic media using the inv...Arthur Weglein
 
4-Navarro-SanchezIGARSS2011.ppt
4-Navarro-SanchezIGARSS2011.ppt4-Navarro-SanchezIGARSS2011.ppt
4-Navarro-SanchezIGARSS2011.pptgrssieee
 

Was ist angesagt? (13)

Retraining maximum likelihood classifiers using low-rank model.ppt
Retraining maximum likelihood classifiers using low-rank model.pptRetraining maximum likelihood classifiers using low-rank model.ppt
Retraining maximum likelihood classifiers using low-rank model.ppt
 
Topological Data Analysis of Complex Spatial Systems
Topological Data Analysis of Complex Spatial SystemsTopological Data Analysis of Complex Spatial Systems
Topological Data Analysis of Complex Spatial Systems
 
Niche comparisons 201606 para curso Lichos
Niche comparisons 201606 para curso LichosNiche comparisons 201606 para curso Lichos
Niche comparisons 201606 para curso Lichos
 
Dn33686693
Dn33686693Dn33686693
Dn33686693
 
Classification of Multi-date Image using NDVI values
Classification of Multi-date Image using NDVI valuesClassification of Multi-date Image using NDVI values
Classification of Multi-date Image using NDVI values
 
Understanding Map Integration Using GIS Software Poster_ff
Understanding Map Integration Using GIS Software Poster_ffUnderstanding Map Integration Using GIS Software Poster_ff
Understanding Map Integration Using GIS Software Poster_ff
 
WEAKLY SUPERVISED FINE-GRAINED CATEGORIZATION WITH PART-BASED IMAGE REPRESENT...
WEAKLY SUPERVISED FINE-GRAINED CATEGORIZATION WITH PART-BASED IMAGE REPRESENT...WEAKLY SUPERVISED FINE-GRAINED CATEGORIZATION WITH PART-BASED IMAGE REPRESENT...
WEAKLY SUPERVISED FINE-GRAINED CATEGORIZATION WITH PART-BASED IMAGE REPRESENT...
 
Articulated human pose estimation by deep learning
Articulated human pose estimation by deep learningArticulated human pose estimation by deep learning
Articulated human pose estimation by deep learning
 
Statistical global modeling of β^- decay halflives systematics ...
Statistical global modeling of β^- decay halflives systematics ...Statistical global modeling of β^- decay halflives systematics ...
Statistical global modeling of β^- decay halflives systematics ...
 
poster
posterposter
poster
 
Direct non-linear inversion of multi-parameter 1D elastic media using the inv...
Direct non-linear inversion of multi-parameter 1D elastic media using the inv...Direct non-linear inversion of multi-parameter 1D elastic media using the inv...
Direct non-linear inversion of multi-parameter 1D elastic media using the inv...
 
4-Navarro-SanchezIGARSS2011.ppt
4-Navarro-SanchezIGARSS2011.ppt4-Navarro-SanchezIGARSS2011.ppt
4-Navarro-SanchezIGARSS2011.ppt
 
FULL PAPER.PDF
FULL PAPER.PDFFULL PAPER.PDF
FULL PAPER.PDF
 

Ähnlich wie Lexie.IGARSS11.pptx

D1T2 canonical ecological niche modeling
D1T2 canonical ecological niche modelingD1T2 canonical ecological niche modeling
D1T2 canonical ecological niche modelingTown Peterson
 
Exploring the Order of Precedence when Using Contextual Dimensions for Mobile...
Exploring the Order of Precedence when Using Contextual Dimensions for Mobile...Exploring the Order of Precedence when Using Contextual Dimensions for Mobile...
Exploring the Order of Precedence when Using Contextual Dimensions for Mobile...Periquest Ltd
 
Land Cover and Land use Classifiction from Satellite Image Time Series Data u...
Land Cover and Land use Classifiction from Satellite Image Time Series Data u...Land Cover and Land use Classifiction from Satellite Image Time Series Data u...
Land Cover and Land use Classifiction from Satellite Image Time Series Data u...Lorena Santos
 
Isprsarchives xl-7-w3-897-2015
Isprsarchives xl-7-w3-897-2015Isprsarchives xl-7-w3-897-2015
Isprsarchives xl-7-w3-897-2015bayrmgl
 
PhD_Thesis_GionaMatasci_2014_wCopyrights
PhD_Thesis_GionaMatasci_2014_wCopyrightsPhD_Thesis_GionaMatasci_2014_wCopyrights
PhD_Thesis_GionaMatasci_2014_wCopyrightsGiona Matasci
 
PhD_Thesis_GionaMatasci_2014_wCopyrights
PhD_Thesis_GionaMatasci_2014_wCopyrightsPhD_Thesis_GionaMatasci_2014_wCopyrights
PhD_Thesis_GionaMatasci_2014_wCopyrightsGiona Matasci
 
see CV
see CVsee CV
see CVbutest
 
Irrera gold2010
Irrera gold2010Irrera gold2010
Irrera gold2010grssieee
 
Subspace_Discriminant_Approach_Hyperspectral.ppt
Subspace_Discriminant_Approach_Hyperspectral.pptSubspace_Discriminant_Approach_Hyperspectral.ppt
Subspace_Discriminant_Approach_Hyperspectral.pptgrssieee
 
Updating Ecological Niche Modeling Methodologies
Updating Ecological Niche Modeling MethodologiesUpdating Ecological Niche Modeling Methodologies
Updating Ecological Niche Modeling MethodologiesTown Peterson
 
D1T3 enm workflows updated
D1T3 enm workflows updatedD1T3 enm workflows updated
D1T3 enm workflows updatedTown Peterson
 
2017: Prototype-based models in unsupervised and supervised machine learning
2017: Prototype-based models in unsupervised and supervised machine learning2017: Prototype-based models in unsupervised and supervised machine learning
2017: Prototype-based models in unsupervised and supervised machine learningUniversity of Groningen
 
Object Classification of Satellite Images Using Cluster Repulsion Based Kerne...
Object Classification of Satellite Images Using Cluster Repulsion Based Kerne...Object Classification of Satellite Images Using Cluster Repulsion Based Kerne...
Object Classification of Satellite Images Using Cluster Repulsion Based Kerne...IOSR Journals
 
Hierarchical clustering and topology for psychometric validation
Hierarchical clustering and topology for psychometric validationHierarchical clustering and topology for psychometric validation
Hierarchical clustering and topology for psychometric validationColleen Farrelly
 
UROP Symposium Poster
UROP Symposium PosterUROP Symposium Poster
UROP Symposium PosterBrad Schwartz
 
Static Spatial Graph Features
Static Spatial Graph FeaturesStatic Spatial Graph Features
Static Spatial Graph FeaturesNiklas Elmqvist
 

Ähnlich wie Lexie.IGARSS11.pptx (20)

D1T2 canonical ecological niche modeling
D1T2 canonical ecological niche modelingD1T2 canonical ecological niche modeling
D1T2 canonical ecological niche modeling
 
10.1.1.17.1245
10.1.1.17.124510.1.1.17.1245
10.1.1.17.1245
 
Exploring the Order of Precedence when Using Contextual Dimensions for Mobile...
Exploring the Order of Precedence when Using Contextual Dimensions for Mobile...Exploring the Order of Precedence when Using Contextual Dimensions for Mobile...
Exploring the Order of Precedence when Using Contextual Dimensions for Mobile...
 
Land Cover and Land use Classifiction from Satellite Image Time Series Data u...
Land Cover and Land use Classifiction from Satellite Image Time Series Data u...Land Cover and Land use Classifiction from Satellite Image Time Series Data u...
Land Cover and Land use Classifiction from Satellite Image Time Series Data u...
 
Isprsarchives xl-7-w3-897-2015
Isprsarchives xl-7-w3-897-2015Isprsarchives xl-7-w3-897-2015
Isprsarchives xl-7-w3-897-2015
 
PhD_Thesis_GionaMatasci_2014_wCopyrights
PhD_Thesis_GionaMatasci_2014_wCopyrightsPhD_Thesis_GionaMatasci_2014_wCopyrights
PhD_Thesis_GionaMatasci_2014_wCopyrights
 
PhD_Thesis_GionaMatasci_2014_wCopyrights
PhD_Thesis_GionaMatasci_2014_wCopyrightsPhD_Thesis_GionaMatasci_2014_wCopyrights
PhD_Thesis_GionaMatasci_2014_wCopyrights
 
see CV
see CVsee CV
see CV
 
Irrera gold2010
Irrera gold2010Irrera gold2010
Irrera gold2010
 
Undergraduate Modeling Workshop - Hierarchical Models for Sparsely Sampled Hi...
Undergraduate Modeling Workshop - Hierarchical Models for Sparsely Sampled Hi...Undergraduate Modeling Workshop - Hierarchical Models for Sparsely Sampled Hi...
Undergraduate Modeling Workshop - Hierarchical Models for Sparsely Sampled Hi...
 
Esa 201211
Esa 201211Esa 201211
Esa 201211
 
Subspace_Discriminant_Approach_Hyperspectral.ppt
Subspace_Discriminant_Approach_Hyperspectral.pptSubspace_Discriminant_Approach_Hyperspectral.ppt
Subspace_Discriminant_Approach_Hyperspectral.ppt
 
Updating Ecological Niche Modeling Methodologies
Updating Ecological Niche Modeling MethodologiesUpdating Ecological Niche Modeling Methodologies
Updating Ecological Niche Modeling Methodologies
 
D1T3 enm workflows updated
D1T3 enm workflows updatedD1T3 enm workflows updated
D1T3 enm workflows updated
 
2017: Prototype-based models in unsupervised and supervised machine learning
2017: Prototype-based models in unsupervised and supervised machine learning2017: Prototype-based models in unsupervised and supervised machine learning
2017: Prototype-based models in unsupervised and supervised machine learning
 
Object Classification of Satellite Images Using Cluster Repulsion Based Kerne...
Object Classification of Satellite Images Using Cluster Repulsion Based Kerne...Object Classification of Satellite Images Using Cluster Repulsion Based Kerne...
Object Classification of Satellite Images Using Cluster Repulsion Based Kerne...
 
Hierarchical clustering and topology for psychometric validation
Hierarchical clustering and topology for psychometric validationHierarchical clustering and topology for psychometric validation
Hierarchical clustering and topology for psychometric validation
 
Undergraduate Modeling Workshop - Forest Cover Working Group Final Presentati...
Undergraduate Modeling Workshop - Forest Cover Working Group Final Presentati...Undergraduate Modeling Workshop - Forest Cover Working Group Final Presentati...
Undergraduate Modeling Workshop - Forest Cover Working Group Final Presentati...
 
UROP Symposium Poster
UROP Symposium PosterUROP Symposium Poster
UROP Symposium Poster
 
Static Spatial Graph Features
Static Spatial Graph FeaturesStatic Spatial Graph Features
Static Spatial Graph Features
 

Mehr von grssieee

Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...
Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...
Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...grssieee
 
SEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODEL
SEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODELSEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODEL
SEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODELgrssieee
 
TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...
TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...
TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...grssieee
 
THE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIES
THE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIESTHE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIES
THE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIESgrssieee
 
GMES SPACE COMPONENT:PROGRAMMATIC STATUS
GMES SPACE COMPONENT:PROGRAMMATIC STATUSGMES SPACE COMPONENT:PROGRAMMATIC STATUS
GMES SPACE COMPONENT:PROGRAMMATIC STATUSgrssieee
 
PROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETER
PROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETERPROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETER
PROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETERgrssieee
 
DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...
DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...
DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...grssieee
 
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...grssieee
 
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...grssieee
 
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...grssieee
 
test 34mb wo animations
test  34mb wo animationstest  34mb wo animations
test 34mb wo animationsgrssieee
 
2011_Fox_Tax_Worksheets.pdf
2011_Fox_Tax_Worksheets.pdf2011_Fox_Tax_Worksheets.pdf
2011_Fox_Tax_Worksheets.pdfgrssieee
 
DLR open house
DLR open houseDLR open house
DLR open housegrssieee
 
DLR open house
DLR open houseDLR open house
DLR open housegrssieee
 
DLR open house
DLR open houseDLR open house
DLR open housegrssieee
 
Tana_IGARSS2011.ppt
Tana_IGARSS2011.pptTana_IGARSS2011.ppt
Tana_IGARSS2011.pptgrssieee
 
Solaro_IGARSS_2011.ppt
Solaro_IGARSS_2011.pptSolaro_IGARSS_2011.ppt
Solaro_IGARSS_2011.pptgrssieee
 

Mehr von grssieee (20)

Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...
Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...
Tangent height accuracy of Superconducting Submillimeter-Wave Limb-Emission S...
 
SEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODEL
SEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODELSEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODEL
SEGMENTATION OF POLARIMETRIC SAR DATA WITH A MULTI-TEXTURE PRODUCT MODEL
 
TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...
TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...
TWO-POINT STATISTIC OF POLARIMETRIC SAR DATA TWO-POINT STATISTIC OF POLARIMET...
 
THE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIES
THE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIESTHE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIES
THE SENTINEL-1 MISSION AND ITS APPLICATION CAPABILITIES
 
GMES SPACE COMPONENT:PROGRAMMATIC STATUS
GMES SPACE COMPONENT:PROGRAMMATIC STATUSGMES SPACE COMPONENT:PROGRAMMATIC STATUS
GMES SPACE COMPONENT:PROGRAMMATIC STATUS
 
PROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETER
PROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETERPROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETER
PROGRESSES OF DEVELOPMENT OF CFOSAT SCATTEROMETER
 
DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...
DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...
DEVELOPMENT OF ALGORITHMS AND PRODUCTS FOR SUPPORTING THE ITALIAN HYPERSPECTR...
 
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
 
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
 
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
EO-1/HYPERION: NEARING TWELVE YEARS OF SUCCESSFUL MISSION SCIENCE OPERATION A...
 
Test
TestTest
Test
 
test 34mb wo animations
test  34mb wo animationstest  34mb wo animations
test 34mb wo animations
 
Test 70MB
Test 70MBTest 70MB
Test 70MB
 
Test 70MB
Test 70MBTest 70MB
Test 70MB
 
2011_Fox_Tax_Worksheets.pdf
2011_Fox_Tax_Worksheets.pdf2011_Fox_Tax_Worksheets.pdf
2011_Fox_Tax_Worksheets.pdf
 
DLR open house
DLR open houseDLR open house
DLR open house
 
DLR open house
DLR open houseDLR open house
DLR open house
 
DLR open house
DLR open houseDLR open house
DLR open house
 
Tana_IGARSS2011.ppt
Tana_IGARSS2011.pptTana_IGARSS2011.ppt
Tana_IGARSS2011.ppt
 
Solaro_IGARSS_2011.ppt
Solaro_IGARSS_2011.pptSolaro_IGARSS_2011.ppt
Solaro_IGARSS_2011.ppt
 

Kürzlich hochgeladen

MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MIND CTI
 
Manulife - Insurer Innovation Award 2024
Manulife - Insurer Innovation Award 2024Manulife - Insurer Innovation Award 2024
Manulife - Insurer Innovation Award 2024The Digital Insurer
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Drew Madelung
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Miguel Araújo
 
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...Neo4j
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FMESafe Software
 
presentation ICT roal in 21st century education
presentation ICT roal in 21st century educationpresentation ICT roal in 21st century education
presentation ICT roal in 21st century educationjfdjdjcjdnsjd
 
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdfUnderstanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdfUK Journal
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProduct Anonymous
 
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityPrincipled Technologies
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonAnna Loughnan Colquhoun
 
Powerful Google developer tools for immediate impact! (2023-24 C)
Powerful Google developer tools for immediate impact! (2023-24 C)Powerful Google developer tools for immediate impact! (2023-24 C)
Powerful Google developer tools for immediate impact! (2023-24 C)wesley chun
 
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAndrey Devyatkin
 
Scaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationScaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationRadu Cotescu
 
Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024The Digital Insurer
 
Top 5 Benefits OF Using Muvi Live Paywall For Live Streams
Top 5 Benefits OF Using Muvi Live Paywall For Live StreamsTop 5 Benefits OF Using Muvi Live Paywall For Live Streams
Top 5 Benefits OF Using Muvi Live Paywall For Live StreamsRoshan Dwivedi
 
Real Time Object Detection Using Open CV
Real Time Object Detection Using Open CVReal Time Object Detection Using Open CV
Real Time Object Detection Using Open CVKhem
 
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businesspanagenda
 

Kürzlich hochgeladen (20)

MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024
 
Manulife - Insurer Innovation Award 2024
Manulife - Insurer Innovation Award 2024Manulife - Insurer Innovation Award 2024
Manulife - Insurer Innovation Award 2024
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
 
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
 
presentation ICT roal in 21st century education
presentation ICT roal in 21st century educationpresentation ICT roal in 21st century education
presentation ICT roal in 21st century education
 
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdfUnderstanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivity
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
 
Powerful Google developer tools for immediate impact! (2023-24 C)
Powerful Google developer tools for immediate impact! (2023-24 C)Powerful Google developer tools for immediate impact! (2023-24 C)
Powerful Google developer tools for immediate impact! (2023-24 C)
 
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
 
Scaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationScaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organization
 
Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024
 
Top 5 Benefits OF Using Muvi Live Paywall For Live Streams
Top 5 Benefits OF Using Muvi Live Paywall For Live StreamsTop 5 Benefits OF Using Muvi Live Paywall For Live Streams
Top 5 Benefits OF Using Muvi Live Paywall For Live Streams
 
Real Time Object Detection Using Open CV
Real Time Object Detection Using Open CVReal Time Object Detection Using Open CV
Real Time Object Detection Using Open CV
 
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
 

Lexie.IGARSS11.pptx

  • 1. Manifold Alignment for MultitemporalHyperspectral Image Classification H. Lexie Yang1, Dr. Melba M. Crawford2 School of Civil Engineering, Purdue University and Laboratory for Applications of Remote Sensing Email: {hhyang1, mcrawford2}@purdue.edu July 29, 2011 IEEE International Geoscience and Remote Sensing Symposium
  • 2. Outline Introduction Research Motivation Effective exploitation of information for multitemporal classification in nonstationary environments Goal: Learn “representative” data manifold Proposed Approach Manifold alignment via given features Manifold alignment via correspondences Manifold alignment with spectral and spatial information Experimental Results Summary and Future Directions
  • 3. Introduction N>>30 3 2 1 2001 2003 2004 2005 2006 2002 2001 N narrow spectral bands June July May May May May June Challenges for classification of hyperspectral data temporally nonstationary spectra high dimensionality
  • 4. Research Motivation Nonstationarities in sequence of images Spectra of same class may evolve or drift over time Potential approaches Semi-supervised methods Adaptive schemes Exploit similar data geometries Explore data manifolds Good initial conditions required
  • 5. Manifold Learning for Hyperspectral Data Characterize data geometry with manifold learning To capture nonlinear structures To recover intrinsic space (preserve spectral neighbors) To reduce data dimensionality Classification performed in low dimensional space Original space Manifold space 3rd dim Spectral bands n Spatial dimension 6 5 4 3 2 1 Spatial dimension 1st dim 2nd dim
  • 6.
  • 7.
  • 8. Approach: Extract and optimally align local geometry to minimize overall differencesLocality Spectral space at T2 Spectral space at T1
  • 9. Proposed Approach: Conceptual Idea (Ham, 2005)
  • 10.
  • 11. Manifold Alignment: Introduction and are 2 multitemporalhyperspectral images Predict labels of using labeled Explore local geometries using graph Laplacian and some form of prior information Define Graph Laplacian Twopotential forms of prior information: given features and pairwise correspondences [Ham et al. 2005]
  • 12. Manifold Alignment via Given Features Minimize Joint Manifold Given Features
  • 13. Manifold Alignment via Pairwise Correspondences Minimize Correspondences between and Joint Manifold
  • 14. MA with spectral and spatial information Combine spatial locations with spectral signatures To improve local geometries (spectral) quality Idea: Increase similarity measure when two samples are close together Weight matrix for graph Laplacian: where spatial location of each pixel is represented as
  • 15.
  • 16. May, June pair: Adjacent geographical area
  • 17. June, July pair: Targeted the same areaMay June July
  • 18. Experimental Results: Framework L L L I1, I2 I1 I2 Graph Laplacian Prior information Joint manifold Given features Classification with KNN Correspondences Develop Data Manifold of Pooled Data
  • 19. Manifold Learning for Feature Extraction Global methods consider geodesic distance Isometric feature mapping (ISOMAP) Local methods consider pairwise Euclidian distance Locally Linear Embedding (LLE): (Saul and Roweis, 2000) Local Tangent Space Alignment (LTSA): (Zhang and Zha, 2004) LaplacianEigenmaps (LE): (Belkin and Niyogi, 2004) (Tenenbaum, 2000)
  • 20. MA with Given Features Baseline: Joint manifold developed by pooled data 79.21 77.29 77.88 76.31 (May, June pair)
  • 21.
  • 22. Summary and Future Directions Multitemporal spectral changes result in failure to provide a faithful data manifold Manifold alignment framework demonstrates potential for nonstationary environment by utilizing similar local geometries and prior information Spatial proximity contributes to stabilization of local geometries for manifold alignment approaches Future directions Investigate alternative spatial and spectral integration strategy Address issue of longer sequences of images
  • 24. References J. Ham, D. D. Lee, and L. K. Saul, “Semisupervised alignment of manifolds,” in International Workshop on Artificial Intelligence and Statistics, August 2005.
  • 26. Local Manifold Learning for Feature Extraction (s,f) Local geometry preserved via various strategies for embedding Popular local manifold learning methods Locally Linear Embedding (LLE): (Saul and Roweis, 2000) Local Tangent Space Alignment (LTSA): (Zhang and Zha, 2004) LaplacianEigenmaps (LE): (Belkin and Niyogi, 2004) Pairwise distance between neighbors computed using Gaussian kernel function - O(pN2) method Embedding computed to minimize the total distance between neighbors
  • 27. LE: Impact of Parameter Values Parameter values for local embedding s obtained via grid search k, p obtained empirically BOT Class 3, 6 BOT Classes 1-9
  • 28.
  • 29.
  • 30. Alignment Results: Critical Class Critical class: Woodlands
  • 31.
  • 32. MA Results – Classification Accuracy Classified via Given Features (Spectral + spatial) Classified via Correspondences (Spectral + spatial) Labeled Class (Subset Data) Classified via Given Features (Spectral) Classified via Correspondences (Spectral) May, June pair

Hinweis der Redaktion

  1. The added earth logo is from the website: http://rst.gsfc.nasa.gov/Sect19/Sect19_2a.html
  2. PREVIOUS WORK TO SOLVE THE DIFFICULTIES: Semi-supervised approach requires the assumption of smooth changes. However, sometimes the assumption maybe not true for multitemporal data sets.It is also commonly seen that adaptive schemes are used to redefine decision boundaries. Statistically speaking, class distributions will alter due to environments. Mean or variances will be different from a scene to a scene. Decision boundaries therefore are needed to adjust according to samples from new scene. DIFFERENT POINT OF VIEW: in geometric learning point of view, since we are talking about a geometric learning methodology, we assume two data sets are similar in some sense, and we need to find a mapping between two similar structures.
  3. WHY DOES MA WORK FOR CLASSIFICATION: Our main interest is to classify. Aligning similar underlying manifolds is beneficial to classification work when at least one image contains label information. A joint manifold can characterize geometric structures of both data sets.
  4. First term: preserving given featuresSecond term: clustering conditions on local properties\\mu: tuning the relative weights of two terms in the cost function
  5. First term: pairwise alignment constraintsSecond and third terms: Local properties\\mu: tuning the relative weights of two terms in the cost function
  6. Font in equation description
  7. BASELINE: Demonstrate how pooled data can fail a proper joint manifoldUse other colors, not gray
  8. Change color MA space using lower cases
  9. Bold: class accuracy May, June pair
  10. [WK] Slide 5 introduced the abbreviations for the local methods.
  11. [WK] Slide 5 introduced the abbreviations for the local methods.
  12. Compare to previous results?