Training Effective Node Classifiers for Cascade Classification

被引:0
|
作者
Chunhua Shen
Peng Wang
Sakrapee Paisitkriangkrai
Anton van den Hengel
机构
[1] The University of Adelaide,Australian Centre for Visual Technologies, School of Computer Science
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关键词
AdaBoost; Minimax probability machine; Cascade classifier; Object detection; Human detection;
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暂无
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学科分类号
摘要
Cascade classifiers are widely used in real-time object detection. Different from conventional classifiers that are designed for a low overall classification error rate, a classifier in each node of the cascade is required to achieve an extremely high detection rate and moderate false positive rate. Although there are a few reported methods addressing this requirement in the context of object detection, there is no principled feature selection method that explicitly takes into account this asymmetric node learning objective. We provide such an algorithm here. We show that a special case of the biased minimax probability machine has the same formulation as the linear asymmetric classifier (LAC) of Wu et al. (linear asymmetric classifier for cascade detectors, 2005). We then design a new boosting algorithm that directly optimizes the cost function of LAC. The resulting totally-corrective boosting algorithm is implemented by the column generation technique in convex optimization. Experimental results on object detection verify the effectiveness of the proposed boosting algorithm as a node classifier in cascade object detection, and show performance better than that of the current state-of-the-art.
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页码:326 / 347
页数:21
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