不同人脸识别算法下面部表情和视点变化对人脸识别精度的影响

M. Phankokkruad, Phichaya Jaturawat
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引用次数: 9

摘要

人脸识别是目前在该研究领域受到关注的一种基于生物特征的个人身份识别方法。人脸识别过程可以在没有人和设备交互的情况下完成,因此它可以应用于多种应用。此外,人脸识别系统通常在不受约束的环境中不同的地方实施。因此,研究影响人脸识别准确性的因素是一个有趣而富有挑战性的课题。在使用人脸识别的考勤系统中,有三个因素的变化可能影响系统的准确性;面部表情和面部观点。本研究旨在比较三种知名的人脸识别算法(Eigenfaces、Fisherfaces和LBPH)的识别精度。在实际课堂中进行的面部表情变化和面部观点的实验。实验结果表明,LBPH是最精确的算法,在基于静止图像的测试中,准确率达到81.67%。对准确性影响最大的面部表情是咧嘴笑,影响准确性的面部视角分别是向下看、向左倾斜和向右倾斜。因此,从准确率考虑,LBPH算法是最适合应用于考勤系统的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Influence of facial expression and viewpoint variations on face recognition accuracy by different face recognition algorithms
Face recognition is a personal identification method using biometrics that is gaining the attention in this research field. The face recognition process can be done without the human and devices interaction, so it can be applied in several applications. In additions, the face recognition systems are typically implemented at different places in unconstrained environments. Hence, the study of the factors that impact the face recognition accuracy is an interesting and challenging topic. In the class attendance checking system using face recognition, there are variations of three factors that possibly affect the accuracy of the system; facial expressions, and face viewpoints. This study intends to compare facial recognition accuracy of three well-known algorithms namely Eigenfaces, Fisherfaces, and LBPH. The experiments conducted in the respects of the variation of facial expressions, and face viewpoints in the actual classroom. The results of the experiment demonstrated that LBPH is the most precise algorithm which achieves 81.67% of accuracy in still-image-based testing. The facial expression that has the most impact on accuracy is the grin, and face viewpoints that affect accuracy are looking down and tilting left, and right respectively. Therefore, LBPH is the most suitable algorithm to apply in a class attendance checking system after considering the accuracy.
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