Abstract

Finding human faces automatically in an image is a di cult yet important rst step to a fully automatic face recognition system.It is also an interesting academic problem because a successful face detection system can provide valuable insight o n h o w one might a p p r o a c h other similar object and pattern detection problems.This paper presents an example-based learning approach for locating vertical frontal views of human faces in complex scenes.The technique models the distribution of human face patterns by means of a few view-based \face" and \non-face" prototype clusters.At e a c h image location, a di erence feature vector is computed between the local image pattern and the distribution-based model.A trained classi er determines, based on the di erence feature vector, whether or not a human face exists at the current image location.We s h o w empirically that the prototypes we c hoose for our distribution-based model, and the distance metric we adopt for computing di erence feature vectors, are both critical for the success of our system.

Keywords

Computer scienceFace (sociological concept)Artificial intelligenceFace detectionComputer visionFacial recognition systemPattern recognition (psychology)Sociology

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Year
1994
Type
report
Citations
268
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Closed

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Kah Kay Sung, Tomaso Poggio (1994). Example Based Learning for View-Based Human Face Detection.. . https://doi.org/10.21236/ada295738

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DOI
10.21236/ada295738