基于支持向量机的人脸识别:全局与基于组件的方法

B. Heisele, Purdy Ho, T. Poggio
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引用次数: 548

摘要

我们提出了一种基于分量的人脸识别方法和两种全局人脸识别方法,并评估了它们对姿态变化的鲁棒性。在成分系统中,我们首先对人脸成分进行定位、提取并组合成单个特征向量,然后利用支持向量机(SVM)进行分类。这两个全局系统通过对由整个人脸图像的灰度值组成的单个特征向量进行分类来识别人脸。在第一个全局系统中,我们为数据库中的每个人训练单个SVM分类器。第二个系统由特定视点的SVM分类器集合组成,并在训练过程中涉及聚类。我们对数据库进行了广泛的测试,其中包括旋转深度约为40/spl度的人脸。组件系统在所有测试中明显优于两个全局系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face recognition with support vector machines: global versus component-based approach
We present a component-based method and two global methods for face recognition and evaluate them with respect to robustness against pose changes. In the component system we first locate facial components, extract them and combine them into a single feature vector which is classified by a Support Vector Machine (SVM). The two global systems recognize faces by classifying a single feature vector consisting of the gray values of the whole face image. In the first global system we trained a single SVM classifier for each person in the database. The second system consists of sets of viewpoint-specific SVM classifiers and involves clustering during training. We performed extensive tests on a database which included faces rotated up to about 40/spl deg/ in depth. The component system clearly outperformed both global systems on all tests.
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