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A Brief Introduction on Face Detection Mei-Chen Yeh 04/06/2010 P. Viola and M. J. Jones, Robust Real-Time Face Detection, IJCV 2004.
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Object Detection Find the location of an object if it appear in an image –Does the object appear? –Where is it?
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Applications
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George colony
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Challenges 1: view point variation Michelangelo 1475-1564 Slide (5-10) credit: Fei-Fei Li
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Challenges 2: illumination slide credit: S. Ullman
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Challenges 3: occlusion Magritte, 1957
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Challenges 4: scale
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Challenges 5: deformation Xu, Beihong 1943
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Challenges 6: background clutter Klimt, 1913
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Detection Framework Viola and Jones’ face-detection algorithm –The first object detection framework to provide competitive object detection rates in real-time –Implemented in OpenCV Components –Features Haar-features Integral image (speed up the feature calculation) –Learning AdaBoost algorithm –Cascade method (speed up the detection process)
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Haar-features The difference between pixels’ sum of the white and black areas Based on the face symmetry
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Haar-features Too many features! –Different locations –Different scales Speed-up strategy –Fast calculation of haar-features –Selection of good features 24
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Integral image Sum of pixel values in the blue area Example: 21 2 3 4 3 32 1 2 2 3 42 1 1 1 2 Image 2 3 5 8 12 15 5 8 11 16 22 28 9 14 18 24 31 39 Integral image
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1 3 2 ab c d a = sum(1) b = sum(1+2) c = sum(1+3) d = sum(1+2+3+4) Sum(4) = ? 4 d + a – b – c Four-point calculation! A, B: 2 rectangles => C: 3 rectangles => D: 4 rectangles => 6-point 8-point 9-point
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A 24x24 detection window Four types of haar features Type A The feature pool
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Feature selection A very small number of features can be combined to from an effective classifier! Example: The 1 st and 2 nd features selected by AdaBoost
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Feature selection A week classifier h f1f1 f2f2 f 1 Face! f 2 > θ (a threshold) => Not a Face! h = 1 if f i < θ 0 otherwise
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Feature selection Idea: Combining several weak classifiers to generate a strong classifier w1w1 w2w2 w3w3 wnwn …… w1h1+w2h2+w3h3+…+wnhnw1h1+w2h2+w3h3+…+wnhn ><>< T a week classifier h 1 = 1 or 0 ~ performance of the weak classifier on the training set
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Feature selection Training Dataset –4916 face images –non-face images cropped from 9500 images non-face images positive samplesnegative samples
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AdaBoost Each training sample may have different importance! Focuses more on previously misclassified samples –Initially, all samples are assigned equal weights –Weights may change at each boosting round misclassified samples => increase their weights correctly classified samples => decrease their weights
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AdaBoost decreased increased fifi Initial weights for each data point -∞∞ misclassified
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AdaBoost ……
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Learning the classifier Initialize equal weights to training samples For T rounds –normalize the weights –select the best weak classifier in terms of the weighted error –update the weights (set increased weights to misclassified samples) Linearly combine these T week classifiers to form a strong classifier
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Detection procedure Scans the detector at multiple locations and scales Sub-window m m m m n n n n Image the detection window
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Cascade method Most are non-face images! Rejects negative sub-windows in an early stage Strong Classifier = (W 1 xL 1 + W 2 xL 2 ) + (…)+ (…+ W n xL n ) 123 ><>< T
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Summary Feature Extraction Cascade Detection Face Detection
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Resources OpenCV Library C codes –apps/haartraining –samples/c Detectors –data/haarcascades
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Assignment #3 Due 04/20 11:59pm Build a face detector using the OpenCV resources Send to TA –A picture of yours with detected faces –Subject: Multimedia System Design-Assignment #3-your student id-your name –File name: Assignment #3-your student id-your name For Windows users, you might want to try an older version of OpenCV
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Reminder Brainstorm report (a 2-page formal paper) is due on 4/20.
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