Robust Heterogeneous Discriminative Analysis for Single Sample Per Person Face Recognition

Meng Pang, Yiu-ming Cheung, Binghui Wang, Risheng Liu
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引用次数: 1

Abstract

Single sample face recognition is one of the most challenging problems in face recognition (FR), where only one single sample per person (SSPP) is enrolled in the gallery set for training. Although patch-based methods have achieved great success in FR with SSPP, they still have significant limitations. In this work, we propose a new patch-based method, namely Robust Heterogeneous Discriminative Analysis (RHDA), to tackle FR with SSPP. Compared with the existing patch-based methods, RHDA can enhance the robustness against complex facial variations from two aspects. First, we develop a novel Fisher-like criterion, which incorporates two manifold embeddings, to learn heterogeneous discriminative representations of image patches. Specifically, for each patch, the Fisher-like criterion is able to preserve the reconstruction relationship of neighboring patches from the same person, while suppressing neighboring patches from different persons. Second, we present two distance metrics, i.e., patch-to-patch distance and patch-to-manifold distance, and develop a fusion strategy to combine the recognition outputs of above two distance metrics via joint majority voting for identification. Experimental results on the AR and FERET benchmark datasets demonstrate the efficacy of the proposed method.
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单样本人脸识别的鲁棒异质判别分析
单样本人脸识别是人脸识别中最具挑战性的问题之一,其中每个人只有一个样本(SSPP)被登记在用于训练的图库集中。尽管基于补丁的方法在SSPP的FR中取得了很大的成功,但它们仍然有很大的局限性。在这项工作中,我们提出了一种新的基于补丁的方法,即稳健异质判别分析(RHDA),以解决SSPP的FR问题。与现有的基于patch的方法相比,RHDA可以从两个方面增强对复杂面部变化的鲁棒性。首先,我们开发了一种新的类fisher准则,该准则包含两个歧管嵌入,以学习图像斑块的异构判别表示。具体而言,对于每个patch,类fisher准则能够保留来自同一人的相邻patch的重建关系,同时抑制来自不同人的相邻patch。其次,我们提出了两个距离度量,即patch-to-patch距离和patch-to-manifold距离,并制定了一种融合策略,通过联合多数投票将上述两个距离度量的识别输出结合起来进行识别。在AR和FERET基准数据集上的实验结果证明了该方法的有效性。
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