TY - GEN
T1 - Face detection using mixtures of linear subspaces
AU - Yang, Ming Hsuan
AU - Ahuja, Narendra
AU - Kriegman, David
PY - 2000
Y1 - 2000
N2 - We present two methods using mixtures of linear sub-spaces for face detection in gray level images. One method uses a mixture of factor analyzers to concurrently perform clustering and, within each cluster, perform local dimensionality reduction. The parameters of the mixture model are estimated using an EM algorithm. A face is detected if the probability of an input sample is above a predefined threshold. The other mixture of subspaces method uses Kohonen's self-organizing map for clustering and Fisher linear discriminant to find the optimal projection for pattern classification, and a Gaussian distribution to model the class-conditioned density function of the projected samples for each class. The parameters of the class-conditioned density functions are maximum likelihood estimates and the decision rule is also based on maximum likelihood. A wide range of face images including ones in different poses, with different expressions and under different lighting conditions are used as the training set to capture the variations of human faces. Our methods have been tested on three sets of 225 images which contain 871 faces. Experimental results on the first two datasets show that our methods perform as well as the best methods in the literature, yet have fewer false detects.
AB - We present two methods using mixtures of linear sub-spaces for face detection in gray level images. One method uses a mixture of factor analyzers to concurrently perform clustering and, within each cluster, perform local dimensionality reduction. The parameters of the mixture model are estimated using an EM algorithm. A face is detected if the probability of an input sample is above a predefined threshold. The other mixture of subspaces method uses Kohonen's self-organizing map for clustering and Fisher linear discriminant to find the optimal projection for pattern classification, and a Gaussian distribution to model the class-conditioned density function of the projected samples for each class. The parameters of the class-conditioned density functions are maximum likelihood estimates and the decision rule is also based on maximum likelihood. A wide range of face images including ones in different poses, with different expressions and under different lighting conditions are used as the training set to capture the variations of human faces. Our methods have been tested on three sets of 225 images which contain 871 faces. Experimental results on the first two datasets show that our methods perform as well as the best methods in the literature, yet have fewer false detects.
UR - http://www.scopus.com/inward/record.url?scp=33745137045&partnerID=8YFLogxK
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U2 - 10.1109/AFGR.2000.840614
DO - 10.1109/AFGR.2000.840614
M3 - Conference contribution
AN - SCOPUS:33745137045
SN - 0769505805
SN - 9780769505800
T3 - Proceedings - 4th IEEE International Conference on Automatic Face and Gesture Recognition, FG 2000
SP - 70
EP - 76
BT - Proceedings - 4th IEEE International Conference on Automatic Face and Gesture Recognition, FG 2000
PB - IEEE Computer Society
T2 - 4th IEEE International Conference on Automatic Face and Gesture Recognition, FG 2000
Y2 - 28 March 2000 through 30 March 2000
ER -