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COMBINING SPEEDED-UP ROBUST FEATURES WITH PRINCIPAL COMPONENT ANALYSIS IN FACE RECOGNITION SYSTEM

机译:人脸识别系统中的加速鲁棒特征与主成分分析相结合

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摘要

Recently, the techniques of face recognition have been widely used in security application such as security monitoring, and access control. However, there are still some problems in face recognition system in which the light changes, expression changes, head movements and accessory occlusion are the main issues. In this article, a robust face recognition scheme is proposed. Speeded-Up Robust Features algorithm is used for extracting the feature vectors with scale invariance and pose invariance from face images. Then PC A is introduced for projecting the SURF feature vectors to the new feature space as PCA-SURF local descriptors. Finally, the K-means algorithm is applied to clustering feature points, and the local similarity and global similarity are then combined to classify the face images. Experimental results show that the performance of the proposed scheme is better than other methods, and PCA-SURF feature is more robust than original SURF and SIFT local descriptors against the accessory, expression, and pose variations.
机译:近来,面部识别技术已被广泛用于安全应用中,例如安全监视和访问控制。然而,在面部识别系统中仍然存在一些主要问题,其中光的变化,表情的变化,头部的运动和附件的遮挡是主要问题。在本文中,提出了一种鲁棒的人脸识别方案。加速鲁棒特征算法用于从面部图像中提取具有尺度不变性和姿势不变性的特征向量。然后引入PC A,将SURF特征向量作为PCA-SURF局部描述符投影到新的特征空间。最后,将K-means算法应用于聚类特征点,然后将局部相似度和全局相似度进行组合以对人脸图像进行分类。实验结果表明,该方案的性能优于其他方法,并且PCA-SURF的特征比原始的SURF和SIFT局部描述符对附件,表情和姿势变化的鲁棒性更高。

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