Weighted BDPCA Based on Local Feature for Face Recognition with a Single Training Sample

Xin Li, Ke-jun Wang, Ye Tian
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引用次数: 2

Abstract

One of the main challenges faced by the current face recognition techniques lies in the difficulties of collecting samples. In the situation of law actualizing, passport or status validating, only one sample per person is available. Unfortunately, many reported face recognition techniques rely heavily on the size and representative of training set, and most of them will suffer serious performance drop or even fail to work if only one training sample per person is available to the systems. Such a task is very challenging for most current algorithms due to the extremely limited representative of training sample. In this paper, the two-directional 2DPCA (BDPCA) is developed to attack this problem. The block weighted two-directional 2DPCA (MWBDPCA) is proposed for efficient face representation and recognition. Beside this, the fuzzy theory is applied to classification. Experimental results on ORL and a subset of CAS-PEAL face database show that the method presented achieves even higher recognition accuracy. KeywordsFace Recognition with One Single Training Sample; two-directional 2DPCA; MWBDPCA; fuzzy theory
基于局部特征加权BDPCA的单训练样本人脸识别
当前人脸识别技术面临的主要挑战之一是样本采集困难。在法律实施、护照或身份验证的情况下,每人只提供一个样本。不幸的是,许多已报道的人脸识别技术严重依赖于训练集的大小和代表性,如果系统中每个人只有一个训练样本,大多数技术都会出现严重的性能下降甚至无法工作。由于训练样本的代表性非常有限,对于目前大多数算法来说,这样的任务是非常具有挑战性的。为了解决这个问题,本文提出了双向2DPCA (two-directional 2DPCA, BDPCA)。为了实现高效的人脸表示和识别,提出了块加权双向2DPCA (MWBDPCA)算法。除此之外,还将模糊理论应用于分类。在ORL和CAS-PEAL人脸数据库子集上的实验结果表明,该方法具有更高的识别精度。关键词:单样本人脸识别;双向2神龙公司;MWBDPCA;模糊理论
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