在各种黑暗光照下识别人脸的生物识别方法

S. Zeenathunisa, A. Jaya, M. Rabbani
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引用次数: 7

摘要

人脸识别是一种计算机化的生物识别方式,它可以自动识别个人的面部以达到识别的目的。人脸识别的能力可以分为两种,一种是生物特征识别,另一种是视觉感知。生物特征识别可以通过获取一个人的图像并将其与一组已知图像进行匹配来完成,而后者是系统如何感知熟悉的面孔并识别它们。本文提出了一种针对不同光照条件下的正面静态人脸图像的生物特征识别方法。人脸识别生物识别系统根据人的生理特征自动识别人。这方面的研究已经进行了三十多年,但仍需要更多的过程和更好的技术来进行生物特征面部提取和识别。本文通过将预处理方法、局部特征提取器和人脸识别器相结合,提出了一个人脸识别框架。本文开发了一种基于局部二值模式和k -近邻分类器的自动快速快速分类系统。基于Yale - B数据库的实验结果表明,使用LBP和k-NN能够提高在各种黑暗光照下的人脸识别性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A biometric approach towards recognizing face in various dark illuminations
Face Recognition is a computerized biometric modality which automatically identifies an individual's face for the purpose of recognition. The ability to recognize human faces can be categorized under two senses, the former is the biometric identification and the later is the visual perception. The biometric identification can be done by obtaining a person's image and matching the same against the set of known images whereas the later is how the system percepts the familiar faces and recognize them. This paper presents such a biometric identification of the frontal static face image subjected in various dark illuminations. Face Recognition Biometric Systems automatically recognize the individuals based on their physiological characteristics. The research on such areas has been conducted for more than thirty years, but still more processes and better techniques for biometric facial extraction and recognition are required. This paper presents a framework on such issue by integrating the preprocessing method, local feature extractor and a recognizer for face recognition. An automatic FRBS has been developed that uses 1) Local Binary Pattern and 2) k — Nearest Neighbor classifier. Experimental results based on the Yale — B database show that the use of LBP and k-NN is able to improve the face recognition performance in various dark illuminations.
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