基于低秩表示的判别多流形分析在低分辨率人脸识别中的应用

Yashwanth Kumar Mydam, Shyam Singh Rajput, P. Chanak
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引用次数: 0

摘要

实际的人脸识别算法偶尔会遇到低分辨率轮廓图像的问题。监控摄像头拍摄的人脸图像通常倾向于低分辨率(LR),并延伸到不受限制的姿势、噪音、光照条件和遮挡。在本文中,我们引入了一种低矩阵机制,将遮挡或不充分的特征轮廓图像与一组高分辨率(HR)轮廓图像表示进行匹配。在之前的研究中,为了将LR探针与一组HR图库图像匹配,引入了一种基于训练的超分辨率方法,该方法将LR和HR轮廓图像转换为共同判别特征空间(CDFS)进行识别。为了识别受噪声和遮挡约束的LR图像,提出了一种结合鲁棒主成分分析(RPCA)和耦合判别多流形分析(CDMMA)的低矩阵恢复系统。在RPCA中,我们建议从极度损坏的度量中恢复低阶矩阵以获得更好的表示能力,然后以监督的方式执行cdma方法,其中判别特征特征增加以进行识别。然后,采用标准分类方法进行最终识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Low Rank Representation based Discriminative Multi Manifold Analysis for Low-Resolution Face Recognition
Practical face recognition algorithms occasionally faced with the problem of low-resolution profile images. Face images taken by monitoring cameras generally tend to be low-resolution(LR) with extension to unrestrained poses, noise, lighting conditions and occlusion. In this paper, we introduce a low matrix mechanism of matching occluded or inadequate characteristic profile images to a group of high-resolution(HR) profile image representations. In previous research, for matching an LR probe to a set of HR gallery images has introduced a training-based super-resolution approach which transforms LR and HR profile images into a common discriminant characteristic feature space (CDFS) for recognition. To distinguish LR images which are constrained to noise and occlusion, we present a low matrix recovery system which combines the concept of robust principal component analysis (RPCA) and coupled discriminant multi-manifold analysis (CDMMA). In RPCA, we propose to recover a low order matrix from extremely corrupted measures for better representation ability and then perform CDMMA approach in a supervised way where discriminant characteristic features for recognition increased. And then, a standard classification method is employed for final identification.
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