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Boosting 2-Thresholded Weak Classifiers over Scattered Rectangle Features for Object Detection
Journal Title Journal of Multimedia
Journal Abbreviation jmm
Publisher Group Academy Publisher
Website http://ojs.academypublisher.com
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Title Boosting 2-Thresholded Weak Classifiers over Scattered Rectangle Features for Object Detection
Authors Zhang, Weize; Tong, Ruofeng; Dong, Jinxiang
Abstract In this paper, we extend Viola and Jones’ detection framework in two aspects. Firstly, by removing the restriction of the geometry adjacency rule over Haarlike feature, we get a richer representation called scattered rectangle feature, which explores much more orientations other than horizontal, vertical and diagonal, as well as misaligned, detached and non-rectangle shape information that is unreachable to Haar-like feature. Secondly, we strengthen the discriminating power of the weak classifiers by expanding them into 2-thresholded ones, which guarantees a better classification with smaller error, by the simple motivation that the bound on the accuracy of the final hypothesis improves when any of the weak hypotheses is improved. An optimal linear online algorithm is also proposed to determine the two thresholds. The comparison experiments on MIT+CMU upright face test set under an objective detection criterion show that the extended method outperforms the original one.
Publisher ACADEMY PUBLISHER
Date 2009-12-01
Source Journal of Multimedia Vol 4, No 6 (2009): Special Issue: Selected Best Papers of IITA 2008 - Track on Multimedia Informat
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