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Face Recognition Independent of Facial Expression Through SOM-based Classifiers

机译:面部识别与基于SOM的分类器无关的面部表情

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In this paper, we evaluate four pattern classifiers built from the self-organizing map (SOM), a well-known neural clustering algorithm, in the recognition of faces independent of facial expression. The design of two of the classifiers involves post-training procedures for labeling the neurons, i.e. no class information is used prior to the training phase. The other two classifiers incorporate class information prior to the training phase. All the classifiers are evaluated using the well-known Yale face database and their performances compare favorably with standard neural supervised classifiers.
机译:在本文中,我们评估了从自组织地图(SOM),众所周知的神经聚类算法构建的四个模式分类器,在识别面部表情的面部识别。两种分类器的设计涉及用于标记神经元的训练后程序,即在训练阶段之前使用课程信息。另外两个分类器在培训阶段之前包含课程信息。使用众所周知的耶鲁面部数据库进行评估所有分类器,它们的性能与标准神经监督分类器有利地比较。

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