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Novel Face Detection Method Based on Gabor Features
Jie Chen, Shiguang Shan, Peng Yang, Shengye Yan, Xilin Chen, Wen Gao
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Outline Face detection survey Existing problem of the system
Our solution Experiments Conclusion 2019/1/12
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How many faces in this pixture?
Face detection Face detection is to determine whether there are any faces within a given image, and return the location and extent of each face in the image if one or more faces present. How many faces in this pixture? 2019/1/12
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AdaBoost T T T T F F F F Local Feature Local Feature Local Feature
All Samples Accepted Samples F F F F Rejected samples P. Viola and M. Jones “Rapid object detection using a boosted cascade of simple features” CVPR 2001 2019/1/12
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Boosting and its variations
2019/1/12
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Existing problem of the system
feature Computation cost false alarms Representation ability Haar low high weak Gabor strong 2019/1/12
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Our solution AdaBoost + (Harr+Gabor)
Harr features : increase the speed Gabor features : decrease the false alarms. The final strong classifier is consisted of a few hundreds of weak classifiers (Harr+Gabor features). 2019/1/12
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Gabor filter 2019/1/12
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Gaborface 2019/1/12
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The schematic of the proposed method
2019/1/12
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Experiments Training set and testing set: 2019/1/12
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Some examples of Set1 2019/1/12
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The ROC curves for our detectors on the MIT face test set
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Training the Detector 2019/1/12
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The ROC curves on the MIT+CMU frontal face test set.
2019/1/12
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CAS-PEAL Face Database
Contains 99,594 images of 1040 individuals (595 males and 445 females) Varying Pose, Expression, Accessory, and Lighting (PEAL) 2019/1/12
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Detection rates on CAS-PEAL
Data Set Faces False alarms Detection rates Results in each sub-directory Frontal 9029 66 96.42% POSE (within 30o) PD 4998 18 94.74% PM 4993 35 99.78% PU 135 98.06% Total 24018 254 97.08% 2019/1/12
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Demo show 2019/1/12
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Thank you very much! END 2019/1/12
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