Investigation on Different Pre-processing Approaches for Face Recognition System

M. Sani, K. A. Ishak, Salina Abd Samad
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Abstract

One of the challenges in face recognition system is to deal with inhomogeneous intensity problem that occur with different lighting conditions. In this paper, comparisons are made on several pre-processing methods i.e. histogram equalization, local binary pattern, wavelet transform and multiscale retinex. First, the input image is pre-processed with the illumination correction method before the classification task is done. The results are evaluated using the Yale, ORL and our own UKM database. These databases include images with various illumination conditions and expressions. Using PCA as the feature extraction and Euclidean Distance as the classification purposed, our experiments shows that multiscale retinex achieved the lowest equal error rates with 5.03% followed by local binary pattern (7.52%), wavelet transform (12.53%) and histogram equalization (12.97%) on average for all three databases.
人脸识别系统不同预处理方法的研究
人脸识别系统面临的挑战之一是处理不同光照条件下的非均匀光照问题。本文对直方图均衡化、局部二值模式、小波变换和多尺度retinex等几种预处理方法进行了比较。首先,在完成分类任务之前,对输入图像进行光照校正预处理。结果使用耶鲁大学,ORL和我们自己的UKM数据库进行评估。这些数据库包括各种光照条件和表情的图像。实验结果表明,以PCA作为特征提取,以欧氏距离为分类目的,多尺度retinex的平均错误率最低,为5.03%,其次是局部二值模式(7.52%)、小波变换(12.53%)和直方图均衡化(12.97%)。
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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