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Face Recognition with Improved Pairwise Coupling Support Vector Machines

机译:与改进的成对耦合支持向量机的人脸识别

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When dealing with multi-class classification tasks, a popular and applicable way is to decompose the original problem into a set of binary subproblems. The most well-known decomposition strategy is one-against-one and the corresponding widely-used method to recombine the outputs of all binary classifiers is pairwise coupling (PWC). However PWC has an intrinsic shortcoming; many meaningless partial classification results contribute to the global prediction result. In this paper, this problem is tackled by the use of correcting classifiers. A novel algorithm is proposed which works in two steps: First the original pairwise probabilities are converted into a new set of pairwise probabilities, then pairwise coupling is employed to construct the global posterior probabilities. This algorithm is applied to face recognition on the ORL face database, experimental results show that it is effective and efficient.
机译:在处理多级分类任务时,流行且适用的方法是将原始问题分解为一组二进制子问题。最着名的分解策略是一个反对 - 一个和相应的广泛使用的方法来重新组合所有二进制分类器的输出是成对耦合(PWC)。但普华永道有一个内在的缺点;许多无意义的部分分类结果有助于全局预测结果。在本文中,通过使用校正分类器来解决这个问题。提出了一种新颖的算法,其有两步起作用:首先,原始成对概率被转换为一组新的成对概率,然后采用成对耦合来构造全局的后验概率。该算法应用于对ORL面部数据库的面部识别,实验结果表明它是有效和有效的。

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