In Defense of Sparsity Based Face Recognition

Weihong Deng, Jiani Hu, Jun Guo
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引用次数: 186

Abstract

The success of sparse representation based classification (SRC) has largely boosted the research of sparsity based face recognition in recent years. A prevailing view is that the sparsity based face recognition performs well only when the training images have been carefully controlled and the number of samples per class is sufficiently large. This paper challenges the prevailing view by proposing a ``prototype plus variation'' representation model for sparsity based face recognition. Based on the new model, a Superposed SRC (SSRC), in which the dictionary is assembled by the class centroids and the sample-to-centroid differences, leads to a substantial improvement on SRC. The experiments results on AR, FERET and FRGC databases validate that, if the proposed prototype plus variation representation model is applied, sparse coding plays a crucial role in face recognition, and performs well even when the dictionary bases are collected under uncontrolled conditions and only a single sample per classes is available.
基于稀疏度的人脸识别
基于稀疏表示的分类(SRC)的成功极大地推动了近年来基于稀疏表示的人脸识别研究。一种流行的观点是,基于稀疏度的人脸识别只有在训练图像被仔细控制并且每个类的样本数量足够大的情况下才能表现良好。本文提出了一种基于稀疏性的人脸识别的“原型加变异”表示模型,挑战了目前流行的观点。在此基础上,提出了一种基于类质心和样本间质心差异对字典进行组合的Superposed SRC (SSRC)模型。在AR、FERET和FRGC数据库上的实验结果表明,如果采用本文提出的原型加变异表示模型,稀疏编码在人脸识别中发挥了至关重要的作用,即使在不受控制的条件下收集字典库,每个类只有一个样本,稀疏编码也能取得很好的效果。
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