An Information-Theoretic Measure for Face Recognition: Comparison with Structural Similarity

A. F. Hassan, Z. M. Hussain, Dong Cai-lin
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引用次数: 8

Abstract

Automatic recognition of people faces is a challenging problem that has received significant attention from signal processing researchers in recent years. This is due to its several applications in different fields, including security and forensic analysis. Despite this attention, face recognition is still one among the most challenging problems. Up to this moment, there is no technique that provides a reliable solution to all situations. In this paper a novel technique for face recognition is presented. This technique, which is called ISSIM, is derived from our recently published information - theoretic similarity measure HSSIM, which was based on joint histogram. Face recognition with ISSIM is still based on joint histogram of a test image and a database images. Performance evaluation was performed on MATLAB using part of the well-known AT&T image database that consists of 49 face images, from which seven subjects are chosen, and for each subject seven views (poses) are chosen with different facial expressions. The goal of this paper is to present a simplified approach for face recognition that may work in real-time environments. Performance of our information - theoretic face recognition method (ISSIM) has been demonstrated experimentally and is shown to outperform the well-known, statistical-based method (SSIM).
一种人脸识别的信息论方法:与结构相似度的比较
人脸自动识别是近年来信号处理研究人员关注的一个具有挑战性的问题。这是由于它在不同领域的几个应用,包括安全和法医分析。尽管如此,人脸识别仍然是最具挑战性的问题之一。到目前为止,还没有一种技术可以为所有情况提供可靠的解决方案。本文提出了一种新的人脸识别技术。这种方法被称为ISSIM,它是在我们最近发表的基于联合直方图的信息论相似性度量HSSIM的基础上发展而来的。ISSIM人脸识别仍然是基于测试图像和数据库图像的联合直方图。在MATLAB上使用著名的AT&T图像数据库的一部分进行性能评估,该数据库由49张人脸图像组成,从中选择7名受试者,并为每个受试者选择7种不同面部表情的视图(姿势)。本文的目标是提出一种简化的人脸识别方法,可以在实时环境中工作。我们的信息论人脸识别方法(ISSIM)的性能已经被实验证明,并被证明优于众所周知的,基于统计的方法(SSIM)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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