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Recognition of Faces Using Improved Principal Component Analysis

机译:使用改进的主成分分析识别面孔

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Face recognition has been an important issue in computer vision and pattern recognition over the last several decades. While a human can recognize faces easily, automated face recognition remains a great challenge in computer-based automated recognition research. One difficulty in face recognition is how to handle the variations in expression, pose, and illumination when only a limited number of training samples are available. In this paper, an Improved Principal Component Analysis (IPCA) is proposed for face recognition. Initially the eigenspace is created with eigenvalues and eigenvectors. From this space, the eigenfaces are constructed, and the most relevant eigenfaces have been selected using IPCA. With these eigenfaces, the input images are be classified based on Euclidian distance. The proposed method was tested on ORL face database. Experimental results on this database demonstrated the effectiveness of the proposed method for face recognition with less misclassification in comparison with previous methods.
机译:在过去的几十年中,对计算机愿景和模式识别的重要问题是一个重要问题。虽然人类可以容易地识别面,但自动面部识别仍然是基于计算机的自动识别研究的巨大挑战。面部识别中的一个难度是如何处理表达式,姿势和照明的变化,当只有有限数量的训练样本时。本文提出了一种改进的主成分分析(IPCA)以进行人脸识别。最初,eIgenspace是用特征值和特征向量创建的。从这个空间,构造了特征缺口,并且使用IPCA选择了最相关的特征措施。利用这些特征文件,输入图像基于欧几里德距离进行分类。在ORL面部数据库上测试了所提出的方法。该数据库的实验结果表明了与以前的方法相比,较少错误分类的面部识别方法的有效性。

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