Face recognition system invariant to plastic surgery

N. Lakshmiprabha, S. Majumder
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引用次数: 22

Abstract

Facial plastic surgery changes facial features to large extend and thus creating a major problem to face recognition system. This paper proposes a new face recognition system using novel shape local binary texture (SLBT) feature from face images cascaded with periocular feature for plastic surgery invariant face recognition. In-spite of many uniqueness and advantages, the existing feature extraction methods are capable of extracting either shape or texture feature. A method which can extract both shape and texture feature is more attractive. The proposed SLBT can extract global shape, local shape and texture information from a face image by extracting local binary pattern (LBP) instead of direct intensity values from shape free patch of active appearance model (AAM). The experiments conducted using MUCT and plastic surgery face database shows that the SLBT feature performs better than AAM and LBP features. Further increase in recognition rate is achieved by cascading SLBT features from face with LBP features from periocular regions. The result from surgical and non-surgical face database shows that the proposed face recognition system can easily tackle illumination, pose, expression, occlusion and plastic surgery variations in face images.
人脸识别系统不受整形手术的影响
面部整形手术极大地改变了面部特征,从而给人脸识别系统带来了重大问题。本文提出了一种利用人脸图像的形状局部二值纹理(SLBT)特征与眼周特征级联的人脸识别系统,用于整形手术不变人脸识别。尽管现有的特征提取方法有许多独特之处和优点,但它们只能提取形状特征或纹理特征。一种同时提取形状和纹理特征的方法更具吸引力。该算法通过提取局部二值模式(local binary pattern, LBP)来代替主动外观模型(AAM)的直接强度值,从人脸图像中提取全局形状、局部形状和纹理信息。使用MUCT和整形外科面部数据库进行的实验表明,SLBT特征的性能优于AAM和LBP特征。通过将人脸的SLBT特征与眼周区域的LBP特征级联,进一步提高了识别率。手术和非手术面部数据库的结果表明,所提出的人脸识别系统可以很容易地处理面部图像中的照明、姿势、表情、遮挡和整形手术变化。
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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