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Face Recognition with Support Vector Machine

机译:支持向量机的人脸识别

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摘要

Face detection and recognition have received much interest over pass ten years due to the many applications range from access control to driver's licenses. In general, face recognition systems can be classified as: geometric feature-based approaches, template matching and neural approaches. One main drawback of geometric feature-based approaches is not easy to extract and measure the feature. Compared to geometric feature-based approaches, a template-based approach recognizes faces as a whole. The main idea of these methods is to transform the face image into a low dimensional space. Although the approach of template matching and neural are very efficient, the computation is more complex compared to other algorithms. Support Vector Machines recently have been regarded as an effective statistical learning method for pattern recognition. In this paper, we introduce a support vector machine for face recognition. Next, we have shown the experiment result using the polynomial kernel.
机译:十多年来,由于从访问控制到驾驶执照的众多应用,人脸检测和识别引起了人们极大的兴趣。通常,人脸识别系统可以分类为:基于几何特征的方法,模板匹配和神经方法。基于几何特征的方法的一个主要缺点是不容易提取和测量特征。与基于几何特征的方法相比,基于模板的方法可以识别整个面孔。这些方法的主要思想是将面部图像转换为低维空间。尽管模板匹配和神经网络的方法非常有效,但与其他算法相比,计算更为复杂。支持向量机最近被认为是一种有效的模式识别统计学习方法。在本文中,我们介绍了一种用于人脸识别的支持向量机。接下来,我们展示了使用多项式内核的实验结果。

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