In this paper, we described an efficient feature pursuit scheme for
boosting. The proposed method is based on the infomax principle, which
seeks optimal feature that achieves maximal mutual information with
class labels. Direct feature pursuit with infomax is computationally
prohibitive, so an efficient gradient ascent algorithm is further
proposed, based on the quadratic mutual information, non-parametric
density estimation and fast Gauss transform. The feature pursuit
process is integrated into a boosting framework as infomax
boosting. The performance of a face detector based on infomax boosting
is reported.
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