Sami Romdhani, P. Torr, Bernhard Schölkopf, Andrew Blake
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Efficient face detection by a cascaded support–vector machine expansion
We describe a fast system for the detection and localization of human faces in images using a nonlinear ‘support–vector machine’. We approximate the decision surface in terms of a reduced set of expansion vectors and propose a cascaded evaluation which has the property that the full support–vector expansion is only evaluated on the face–like parts of the image, while the largest part of typical images is classified using a single expansion vector (a simpler and more efficient classifier). As a result, only three reduced–set vectors are used, on average, to classify an image patch. Hence, the cascaded evaluation, presented in this paper, offers a thirtyfold speed–up over an evaluation using the full set of reduced–set vectors, which is itself already thirty times faster than classification using all the support vectors.
期刊介绍:
Proceedings A publishes articles across the chemical, computational, Earth, engineering, mathematical, and physical sciences. The articles published are high-quality, original, fundamental articles of interest to a wide range of scientists, and often have long citation half-lives. As well as established disciplines, we encourage emerging and interdisciplinary areas.