基于掌纹和人脸融合的小样本生物识别

A. Poinsot, Fan Yang, M. Paindavoine
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引用次数: 38

摘要

非接触式生物识别技术提供了高度舒适和卫生的个人识别。正因为如此,这样的系统更容易被公众所接受。本文提出了一种结合掌纹和面部两种模式的自适应非接触式生物识别系统。处理链的设计是为了克服嵌入式系统约束和小样本集问题:在从手图像中提取掌纹后,将Gabor滤波器应用于掌纹和面部以提取参数,然后将其用于分类。还讨论了融合的可能性,并使用作者设计的130人的多模态数据库进行了测试。在尊重嵌入式系统环境的情况下,只使用掌纹和将掌纹与人脸融合在一起,每个模态只使用2个样本,识别率分别达到96.39%和98.85%,获得了较高的识别性能。因此,本初步研究表明了一种鲁棒、高效的多模态硬件生物识别系统的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Small Sample Biometric Recognition Based on Palmprint and Face Fusion
Contactless biometrics provide high comfort and hygiene in person recognition. Because of this, such systems are better accepted by the general public. This paper proposes an adaptive, contactless, biometric system which combines two modalities: palmprint and face. The processing chain has been designed to overcome embedded system constraints and small sample set problem: after a palmprint is extracted from a hand image, Gabor filters are applied to both the palmprint and face in order to extract parameters, which are then used for classification. Fusion possibilities are also discussed and tested using a multimodal database of 130 people designed by the authors. High recognition performance has been obtained by respecting embedded system context, with palmprint only and with fusion of palmprint and face: recognition rates of respectively 96.39% and 98.85% are achieved using only 2 samples per modality. Therefore this preliminary study shows the feasibility of a robust and efficient multimodal hardware biometric system.
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