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Using a multiclass novelty classifier for face recognition

机译:使用多种多组新颖性分类器进行人脸识别

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Face recognition, one of the most explored themes in biometry, is used in a wide range of applications: access control, forensic detection, surveillance and monitoring system, robotic and human machine interaction. In this paper, a new classifier is proposed for face recognition. The performance of this new classifier is compared with the performance of the KNN classifier. The face image database used was the ORL. For feature extractions the following methods were employed: PCA, 2DPCA and (2D)2PCA. The performance tests of both classifiers were done both in verification and identification mode. In identification mode, the recognition rate with the leave-one-out strategy is equal to 100% with PCA, 2DPCA and (2D)2PCA. In the verification mode, the recognition rate is 100% with PCA and 2DPCA and 97.5% for (2D)2PCA. For the half-half strategy, the best recognition rate in the identification mode was obtained with (2D)2PCA, 98.5%, and in the verification mode, with PCA, 88%.
机译:面部识别是生物测量中最探索的主题之一,用于各种应用:访问控制,法医检测,监控系统,机器人和人机相互作用。在本文中,提出了一种用于人脸识别的新分类器。将此新分类器的性能与KNN分类器的性能进行比较。使用的面部图像数据库是ORL。对于特征提取,采用以下方法:PCA,2DPCA和(2D)2PCA。在验证和识别模式下,两种分类器的性能测试都是在验证和识别模式下完成的。在识别模式中,带有休假策略的识别率等于100%,PCA,2DPCA和(2D)2PCA等于100%。在验证模式中,识别率为100%,PCA和2DPCA为(2D)2PCA为97.5%。对于半半策略,用(2D)2PCA,98.5%,验证模式,PCA,88%获得识别模式中的最佳识别率。

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