Face recognition using voting technique for the Gabor and LDP features

I. Dagher, Jamal Hassanieh, Ahmad Younes
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引用次数: 2

Abstract

Face recognition can be described by a sophisticated mathematical representation and matching procedures. In this paper, Local Derivative Pattern (LDP) descriptors along with the Gabor feature extraction technique were used to achieve highest percentage of recognition possible. A robust comparison method, the Chi Square Distance, was used as a matching algorithm. Four databases involving different image capturing conditions: positioning, illumination and expressions were used. The best results were obtained after applying a voting technique to the Gabor and the LDP features.
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人脸识别采用投票技术进行Gabor和LDP的特征分析
人脸识别可以通过复杂的数学表示和匹配程序来描述。在本文中,使用局部导数模式(LDP)描述符和Gabor特征提取技术来实现最高的识别率。一种稳健的比较方法,卡方距离,被用作匹配算法。使用了定位、光照和表情四种不同图像捕获条件的数据库。将投票技术应用于Gabor和LDP的特征后,获得了最好的结果。
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