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Using k-nearest neighbors to handle missing weak classifiers in a boosted cascade

机译:使用k最近邻来处理增强级联中丢失的弱分类器

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We propose a generic framework to handle missing weak classifiers at prediction time in a boosted cascade. The contribution is a probabilistic formulation of the cascade structure that considers the uncertainty introduced by missing weak classifiers. This new formulation involves two problems: 1) the approximation of posterior probabilities on each level and 2) the computation of thresholds on these probabilities to make a decision. Both problems are studied and solutions are proposed and evaluated. The method is then applied on a popular computer vision application: detecting occluded faces. Experimental results are provided on classic databases to evaluate the proposed solution related to the basic one.
机译:我们提出了一个通用框架,以在增强级联的预测时间处理缺失的弱分类器。该贡献是级联结构的概率表述,其中考虑了缺失的弱分类器引入的不确定性。这种新的提法涉及两个问题:1)每个级别上的后验概率的近似值; 2)计算这些概率的阈值以做出决定。研究了这两个问题,并提出并评估了解决方案。然后将该方法应用于流行的计算机视觉应用程序:检测被遮挡的脸部。在经典数据库上提供了实验结果,以评估与基本解决方案有关的提议解决方案。

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