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Face verification via error correcting output codes

机译:通过纠错输出代码进行人脸验证

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We propose a novel approach to face verification based on the Error Correcting Output Coding (ECOC) classifier design concept. In the training phase, the client set is repeatedly divided into two ECOC specified sub-sets (super-classes) to train a set of binary classifiers. The output of the classifiers defines the ECOC feature space, in which it is easier to separate transformed patterns representing clients and impostors. As a matching score in this space, we propose the average first order Minkowski distance between the probe and gallery images. The proposed method exhibits superior verification performance on the well known XM2VTS data set as compared with previously reported results.
机译:我们提出了一种基于错误校正输出编码(ECOC)分类器设计概念的新颖的人脸验证方法。在训练阶段,将客户集反复分为两个ECOC指定的子集(超类),以训练一组二进制分类器。分类器的输出定义了ECOC功能空间,在其中更容易分离代表客户和冒名顶替者的转换模式。作为该空间中的匹配分数,我们提出了探针图像和画廊图像之间的平均一阶Minkowski距离。与先前报告的结果相比,所提出的方法在众所周知的XM2VTS数据集上表现出卓越的验证性能。

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