Active Testing for Face Detection and Localization

03/27/2010
by   Raphael Sznitman, et al.
0

We provide a novel search technique, which uses a hierarchical model and a mutual information gain heuristic to efficiently prune the search space when localizing faces in images. We show exponential gains in computation over traditional sliding window approaches, while keeping similar performance levels.

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