Face recognition with CLNF for uncontrolled occlusion faces

K. Shanmugasundaram, S. Sharma, Sathees Kumar Ramasamy
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引用次数: 1

Abstract

Even though there has been enormous research in facial analysis and more sophisticated algorithm, face recognition fails drastically in real time when the facial images are occluded. This paper explains the algorithm and technical concepts behind the high accurate face recognition systems for a 2D frontal images with occlusion for a business requirments. Face recognition is implemented using Convolutional Neural Network (CNN) for training the occlusion images where the features are extracted by using Constrained Local Neural Field (CLNF). The work has done the real time uncontrolled occlusion dataset and recognized the face with the accuracy of 98.5% for the FAR of 0.
基于CLNF的非受控遮挡人脸识别
尽管在人脸分析方面已经有了大量的研究和更复杂的算法,但当人脸图像被遮挡时,人脸识别在实时情况下会严重失败。本文阐述了基于业务需求的高精度二维正面遮挡图像人脸识别系统的算法和技术概念。人脸识别使用卷积神经网络(CNN)对遮挡图像进行训练,并使用约束局部神经场(CLNF)提取特征。本文对实时无控制遮挡数据集进行了处理,在FAR = 0的情况下,人脸识别准确率达到98.5%。
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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