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A Novel Multi-stage Classifier for Face Recognition

机译:一种用于人脸识别的新型多级分类器

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A novel face recognition scheme based on multi-stages classifier, which includes methods of support vector machine (SVM), Eigenface, and random sample consensus (RANSAC), is proposed in this paper. The whole decision process is conducted cascade coarse-to-fine stages. The first stage adopts one-against-one-SVM (OAO-SVM) method to choose two possible classes best similar to the testing image. In the second stage, “Eigenface” method was employed to select one prototype image with the minimum distance to the testing image in each of the two classes chosen. Finally, the real class is determined by comparing the geometric similarity, as done by “RANSAC” method, between these prototype images and the testing images. This multi-stage face recognition system has been tested on Olivetti Research Laboratory (ORL) face databases, and its experimental results give evidence that the proposed approach outperforms the other approaches either based on the single classifier or multi-parallel classifier, it can even obtain a nearly 100 percent recognition accuracy.
机译:本文提出了一种基于多阶段分类器的新型面部识别方案,包括支持向量机(SVM),特征面和随机样品共识(RANSAC)的方法。整个决策过程是对级联粗细至细小的阶段进行的。第一阶段采用一次替换One-SVM(OAO-SVM)方法,以选择与测试图像最佳的两个可能的类。在第二阶段,采用“特征面”方法来选择一个原型图像,其与所选择的两个类中的每个类中的测试图像的最小距离。最后,通过将几何相似性进行比较,如通过“Ransac”方法在这些原型图像和测试图像之间进行比较来确定真实类。在Olivetti Research实验室(ORL)面部数据库上测试了这种多级面部识别系统,其实验结果证明了基于单分类器或多并行分类器的提出方法优于其他方法,甚至可以获得近100%的识别准确性。

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