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Deep Learning &
Feature Learning
Methods for Vision



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Tutorial Overview
Overview
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Existing Recognition Approach




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Motivation
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What Limits Current Performance?
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Hand-Crafted Features
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Mid-Level Representations
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Why Learn Features?

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Why Hierarchy?


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Hierarchies in Vision
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Hierarchies in Vision
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Learning a Hierarchy
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Multistage Hubel-Wiesel Architecture

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Classic Approach to Training

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Deep Learning

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Single Layer Architecture
Example Feature Learning Architectures
SIFT Descriptor
Spatial Pyramid Matching
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Translation Equivariance

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Filtering

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Filtering

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Normalization

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Normalization
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Normalization
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Role of Normalization
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Pooling
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Role of Pooling
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Role of Pooling

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Unsupervised Learning

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Auto-Encoder
Auto-Encoder Example 1
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          σ(WTz)      σ(Wx)
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Taxonomy of Approaches

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Stacked Auto-Encoders
At Test Time

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Information Flow in Vision Models

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Deep Boltzmann Machines
Why is Top-Down important?
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Multi-Scale Models
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        HOG Pyramid
Hierarchical Model
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    Input Image/ Features    Input Image/ Features
Multi-scale        vs   Hierarchical




 Feature Pyramid          Input Image/ Features
Structure Spectrum
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Structure Spectrum
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Structure Spectrum

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Structure Spectrum

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Structure Spectrum

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Structure Spectrum
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Structure Spectrum
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Structure Spectrum

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Performance of Deep Learning
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Summary

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Further Resources

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References
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P01 introduction cvpr2012 deep learning methods for vision

Editor's Notes

  1. All I am going to say about Neuroscience, although techniques do have strong connections.
  2. Make clear that classic methods, e.g.convnets are purely supervised.
  3. Need to bring outdiffereceswrt to existing ML stuff, mainly unsupervised learning part. Make use of unlabaled data (lots of it).
  4. Restructure to bigger emphasis on unsupervised.Make clear that classic methods, e.g.convnets are purely supervised.
  5. Winder and Brown paper. Slightly smoothed view of things.
  6. Selection instead of normalization?
  7. Note pooling is across space, not across Gabor channelNormalization is really nonlinear (small elements not rescaled)
  8. Non-maximal suppression across VW. Like an L-InfnormalizationMax = k-means
  9. Graph not clear. Explain better. Y-axis is change in value
  10. Mention Leonardis & Fidler paper
  11. Too far for labels to trickle down (vanishing gradients)Only information from layer below.Input is supervision.
  12. Add overall energy
  13. Not separate operations Do it at the same
  14. Chriswilliams oral link
  15. Occlusion mask: bootom right quad for sofa interpretationCan’t decide locally If you knew solution, would know what features to extract.
  16. DPM is shape hierarchical HOG templates
  17. DPM is shape hierarchical HOG templates
  18. Song Chun ‘s clock