A robust shadow and light region detection using within-class variance in face images

T. Tuan, M. Song, J. Kim
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引用次数: 1

Abstract

Nowadays, computer vision has become increasingly important in real world systems for commercial, industrial, and military applications. And, a facial recognition system is one of such computer applications for automatically identifying or verifying a human face from a video frames by comparing selected facial features from the image and a facial database. Unfortunately, some recent algorithms have many problems in their accuracy due to some effects of illumination changes such as shadow or light. For that reason, we propose a robust shadow and light detection using within class variance which helps to detect all shadow and light regions in a face image. These detected regions will be the input of some recovery systems to obtain the illumination-invariant images. In this paper, we also have an overview of all shadow and light regions in a human face image and classified them into many different regions based on their characteristics. Results on various indoor and outdoor sequences under illumination variations show the success of our proposed approach.
基于类内方差的人脸图像阴影和光照区域鲁棒检测
如今,计算机视觉在商业、工业和军事应用的现实世界系统中变得越来越重要。并且,面部识别系统是这样的计算机应用程序之一,通过比较从图像和面部数据库中选择的面部特征,从视频帧中自动识别或验证人脸。遗憾的是,目前的一些算法由于光照变化(如阴影或光线)的影响,在精度上存在很多问题。出于这个原因,我们提出了一种鲁棒的阴影和光检测使用类内方差,这有助于检测人脸图像中的所有阴影和光区域。这些检测到的区域将成为一些恢复系统的输入,以获得光照不变图像。在本文中,我们还概述了人脸图像中的所有阴影和光明区域,并根据它们的特征将它们划分为许多不同的区域。在不同光照条件下的室内和室外序列实验结果表明,该方法是成功的。
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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