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.
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Publication Info
- Year
- 1994
- Type
- report
- Citations
- 268
- Access
- Closed
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- DOI
- 10.21236/ada295738