Face Image Analysis by Unsupervised Learning

Pirmais vāks
Springer Science & Business Media, 2001. gada 30. jūn. - 173 lappuses
Face Image Analysis by Unsupervised Learning explores adaptive approaches to image analysis. It draws upon principles of unsupervised learning and information theory to adapt processing to the immediate task environment. In contrast to more traditional approaches to image analysis in which relevant structure is determined in advance and extracted using hand-engineered techniques, Face Image Analysis by Unsupervised Learning explores methods that have roots in biological vision and/or learn about the image structure directly from the image ensemble. Particular attention is paid to unsupervised learning techniques for encoding the statistical dependencies in the image ensemble.
The first part of this volume reviews unsupervised learning, information theory, independent component analysis, and their relation to biological vision. Next, a face image representation using independent component analysis (ICA) is developed, which is an unsupervised learning technique based on optimal information transfer between neurons. The ICA representation is compared to a number of other face representations including eigenfaces and Gabor wavelets on tasks of identity recognition and expression analysis. Finally, methods for learning features that are robust to changes in viewpoint and lighting are presented. These studies provide evidence that encoding input dependencies through unsupervised learning is an effective strategy for face recognition.
Face Image Analysis by Unsupervised Learning is suitable as a secondary text for a graduate-level course, and as a reference for researchers and practitioners in industry.

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SUMMARY
INTRODUCTION
3
211 Generative models
4
212 Redundancy reduction as an organizational principle
6
213 Information theory
7
214 Redundancy reduction in the visual system
9
215 Principal component analysis
10
216 Hebbian learning
11
45 Overview of approach
79
IMAGE REPRESENTATIONS FOR FACIAL EXPRESSION ANALYSIS COMPARATIVE STUDY I
81
51 Image database
82
52 Image analysis methods
83
522 Feature measurement
85
523 Optic flow
86
524 Human subjects
88
53 Results
89

217 Explicit discovery of statistical dependencies
13
22 Independent component analysis
15
222 Information maximization learning rule
16
223 Relation of sparse coding to independence
20
23 Unsupervised learning in visual development
22
232 Models of receptive field development based on correlation sensitive learning mechanisms
24
24 Learning invariances from temporal dependencies in the input
27
242 Temporal association in psychophysics and biology
30
25 Computational Algorithms for Recognizing Faces in Images
31
INDEPENDENT COMPONENT REPRESENTATIONS FOR FACE RECOGNITION
37
311 Independent component analysis ICA
40
312 Image data
42
32 Statistically independent basis images
43
Architecture 1
44
Architecture 1
46
33 A factorial face code
51
Architecture 2
52
Architecture 2
54
34 Examination of the ICA Representation
57
342 Sparseness
58
35 Combined ICA recognition system
60
36 Discussion
61
AUTOMATED FACIAL EXPRESSION ANALYSIS
67
412 Featurebased approaches
69
413 Modelbased techniques
70
414 Holistic analysis
71
42 What is needed
72
43 The Facial Action Coding System FACS
73
531 Hybrid system
91
532 Error analysis
92
54 Discussion
94
IMAGE REPRESENTATIONS FOR FACIAL EXPRESSION ANALYSIS COMPARATIVE STUDY II
99
62 Image database
101
63 Optic flow analysis
103
633 Classification procedure
104
64 Holistic analysis
106
642 Local feature analysis LFA
107
643 FisherActions
110
644 Independent component analysis
112
65 Local representations
115
652 Gabor wavelet representation
117
653 PCA jets
118
66 Human subjects
120
67 Discussion
121
68 Conclusion
125
LEARNING VIEWPOINT INVARIANT REPRESENTATIONS OF FACES
127
72 Simulation
131
721 Model architecture
132
723 Temporal association in an attractor network
135
724 Simulation results
138
73 Discussion
145
CONCLUSIONS AND FUTURE DIRECTIONS
149
References
155
Index
169
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