Pedestrian Recognition - PowerPoint PPT Presentation

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Pedestrian Recognition

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Pedestrian Recognition. Oren, Papageorgiou, Sinha, Osuna, Poggio. ... Trainable Pedestrian Detection. International Conference on Image Processing 1999. ... – PowerPoint PPT presentation

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Title: Pedestrian Recognition


1
Pedestrian Recognition
  • Machine Perception and Modeling of Human Behavior
  • Manfred Lau

2
Pedestrian Recognition
  • Oren, Papageorgiou, Sinha, Osuna, Poggio.
    Pedestrian Detection Using Wavelet Templates.
    CVPR 1997.
  • Papageorgiou, and Poggio. Trainable Pedestrian
    Detection. International Conference on Image
    Processing 1999.

3
Motivation
  • Recognition system inside vehicles
  • Valerie detect and greet those who stop in
    front of the booth

4
Overview
Positive samples
Negative samples
Classifier
5
Wavelet Template
-1
1
vertical wavelet
Average of many samples
  • Compute coefficient for each RGB channel and take
    largest absolute value
  • Vertical wavelet identifies vertical color
    differences

6
Wavelet Template
Average of many samples
7
Features
  • Each image is one instance with 1326 features and
    one classification
  • Same thing for negative samples

8
Test case
  • 282 positive samples, 236 negative samples for
    training
  • 20 positives and 20 negatives for testing

Some Positive Samples
9
Some negative samples
10
Results
Nearest neighbor classifier 95 accuracy
Decision tree classifier 90 accuracy
2 false positives
3 false positives, 1 false negative
11
10-fold cross validation
  • Test case 302 positives, 256 negatives
  • Nearest neighbor ? 94.27
  • 30 false positives, 2 false negatives
  • Decision tree ? 86.74
  • 47 false positives, 27 false negatives

12
Incremental bootstrapping
  • Use nearest neighbor
  • But problem with many false positives

13
Incremental bootstrapping
  • Took database of 558 total samples
  • After bootstrapping, 656 total samples

14
Bootstrapping
15
Result
  • A completely new
  • test image
  • Before bootstrapping
  • 85.06 accurate, 65 false pos, 0 false neg
  • After bootstrapping
  • 90.11 accurate, 43 false pos, 0 false neg

16
Result
  • Another new
  • test image
  • Before bootstrapping
  • 75.86 accurate, 100 false pos, 5 false neg
  • After bootstrapping
  • 81.15 accurate, 77 false pos, 5 false neg

17
Splitted up into 560 images, about 30 classified
as positive
Some false positives
true positives
18
Results
19
Less features
  • Take average coefficients across many positive
    samples
  • Pick those features that are darkest/lightest ?
    can use much less than 1326 features, for faster
    classification

20
Conclusions
  • Can detect positive samples well, but many false
    positives
  • Bootstrapping on more and more new images will
    decrease false positives (Im not doing enough of
    this)

21
Limitations
  • Recognize only template, other objects may be
    similar
  • Difficult to define what is a negative sample
  • What if pedestrians are partially occluded?
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