Occlusion invariant face recognition system

Ashwini S. Khadatkar, R. Khedgaonkar, K. S. Patnaik
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引用次数: 9

Abstract

Face recognition has acquired a lot of attention in market and research communities, but still remained very accosting in real time applications. It is one of the several techniques used for identifying an individual. In face recognition system there are many factors which affect the performance of a system. The major factors affecting the face recognition system are pose, illumination, ageing, occlusion and expression etc. Among the above mentioned problem an occlusion is most affecting problem in face recognition. In a face recognition system due to obstacles like sunglasses, scarf etc. we cannot recognize a face image. So first we detect an occlusion from a face image by using a SVM (Support Vector Machine) classifier. To resolve the occlusion problem, each face is divided into k local regions which are analyzed in isolation. We discard an occluded part in a face image and based on remaining non-occluded part of a face image we will recognize a face image. For face recognition purpose we will be using a near set theory.
遮挡不变人脸识别系统
人脸识别在市场和研究领域受到了广泛的关注,但在实时应用中仍然存在很大的问题。这是用来识别个体的几种技术之一。在人脸识别系统中,影响系统性能的因素很多。影响人脸识别系统的主要因素有姿势、光照、年龄、遮挡和表情等。在上述问题中,遮挡是影响人脸识别的最大问题。在人脸识别系统中,由于太阳镜、围巾等障碍物,我们无法识别人脸图像。因此,我们首先使用支持向量机分类器从人脸图像中检测遮挡。为了解决遮挡问题,将每个人脸划分为k个局部区域,并对其进行隔离分析。我们丢弃人脸图像中被遮挡的部分,并基于人脸图像中剩余的未遮挡部分来识别人脸图像。为了人脸识别的目的,我们将使用近集理论。
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