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Distinctive and compact features

机译:独特而紧凑的功能

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We consider the problem of extracting features for multi-class recognition problems. The features are required to make fine distinctions between similar classes, combined with tolerance for distortions and missing information. We define and compare two general approaches, both based on maximizing the delivered information for recognition: one divides the problem into multiple binary classification tasks, while the other uses a single multi-class scheme. The two strategies result in markedly different sets of features, which we apply to face identification and detection. We show that the first produces a sparse set of distinctive features that are specific to an individual face, and are highly tolerant to distortions and missing input. The second produces compact features, each shared by about half of the faces, which perform better in general face detection. The results show the advantage of distinctive features for making fine distinctions in a robust manner. They also show that different features are optimal for recognition tasks at different levels of specificity.
机译:我们考虑为多类识别问题提取特征的问题。需要使用这些功能来区分相似的类,并结合对失真和信息丢失的容忍度。我们定义和比较两种通用方法,两种方法都是基于最大化所传递的信息进行识别:一种将问题分为多个二进制分类任务,而另一种则使用单个多分类方案。这两种策略导致的特征集明显不同,我们将其应用于面部识别和检测。我们表明,第一个产生的稀疏特征集是特定于一张个人脸部的稀疏特征,并且高度容忍失真和缺少输入。第二个产生紧凑的特征,每个特征都由大约一半的面部共享,在一般的面部检测中表现更好。结果显示出独特功能的优势,可以以稳健的方式进行精细区分。他们还表明,不同的功能对于处于不同特异性水平的识别任务是最佳的。

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