Single-Sample Finger Vein Recognition via Competitive and Progressive Sparse Representation

Pengyang Zhao;Zhiquan Chen;Jing-Hao Xue;Jianjiang Feng;Wenming Yang;Qingmin Liao;Jie Zhou
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引用次数: 2

Abstract

As an emerging biometric technology, finger vein recognition has attracted much attention in recent years. However, single-sample recognition is a practical and longstanding challenge in this field, referring to only one finger vein image per class in the training set. In single-sample finger vein recognition, the illumination variations under low contrast and the lack of information of intra-class variations severely affect the recognition performance. Despite of its high robustness against noise and illumination variations, sparse representation has rarely been explored for single-sample finger vein recognition. Therefore, in this paper, we focus on developing a new approach called Progressive Sparse Representation Classification (PSRC) to address the challenging issue of single-sample finger vein recognition. Firstly, as residual may become too large under the scenario of single-sample finger vein recognition, we propose a progressive strategy for representation refinement of SRC. Secondly, to adaptively optimize progressions, a progressive index called Max Energy Residual Index (MERI) is defined as the guidance. Furthermore, we extend PSRC to bimodal biometrics and propose a Competitive PSRC (C-PSRC) fusion approach. The C-PSRC creates more discriminative fused sample and fusion dictionary by comparing residual errors of different modalities. By comparing with several state-of-the-art methods on three finger vein benchmarks, the superiority of the proposed PSRC and C-PSRC is clearly demonstrated.
基于竞争和渐进稀疏表示的单样本手指静脉识别
手指静脉识别作为一种新兴的生物识别技术,近年来受到了广泛的关注。然而,单样本识别是该领域一个实际且长期存在的挑战,因为在训练集中每个类别只涉及一个手指静脉图像。在单样本手指静脉识别中,低对比度下的光照变化和类内变化信息的缺乏严重影响了识别效果。尽管对噪声和光照变化具有很高的鲁棒性,但稀疏表示很少用于单样本手指静脉识别。因此,在本文中,我们专注于开发一种称为渐进稀疏表示分类(PSRC)的新方法来解决单样本手指静脉识别的挑战性问题。首先,针对单样本手指静脉识别场景下残差过大的问题,我们提出了一种递进式的SRC表示细化策略。其次,为了自适应优化过程,定义了一个称为最大能量剩余指数(MERI)的渐进指标作为指导。此外,我们将PSRC扩展到双峰生物识别,并提出了一种竞争性PSRC (C-PSRC)融合方法。C-PSRC通过比较不同模态的残差,创建了更具判别性的融合样本和融合字典。通过对几种最先进的方法在三个手指静脉基准上的比较,清楚地证明了PSRC和C-PSRC的优越性。
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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CiteScore
10.90
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