A Novel Hyperspectral Based Dorsal Hand Recognition System

Wei Nie, Bob Zhang, Shuping Zhao
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引用次数: 2

Abstract

In biometrics, dorsal hand recognition systems are secure, user-friendly, and non-intrusive. Currently, the state-of-the-art in this area uses a single near-infrared spectral band such as 850nm or far-infrared thermography with a range of 8-14μm. This would limit the extraction of only hand veins from a dorsal hand image. However, the dorsal hand contains much more features such as the texture of the skin, pigmented moles, and various chromophores. Therefore, using one spectral band cannot extract all possible dorsal hand features. To resolve this issue, in this paper we propose a novel hyperspectral based dorsal hand recognition system. First, a novel hyperspectral acquisition device is designed to establish a hyperspectral dorsal hand database consisting of 53 spectra. Next, a region of interest was extracted from all spectral dorsal hand images. Then, the partitioned local binary pattern was applied for feature representation extracting both dorsal hand texture and vein features. Finally, the nearest neighborhood classifier was utilized to perform recognition. To validate the proposed system, extensive experiments were conducted on all spectral bands (individually) and the combination of wavelengths of visible light and NIR for both identification and verification using 120 individuals. The highest accuracy for identification (0.998) was achieved using 600nm and 860nm, while for verification the same spectral combo produced the lowest EER of 0.049.
一种新的基于高光谱的手背识别系统
在生物识别技术中,手背识别系统是安全的,用户友好的,非侵入性的。目前,该领域最先进的技术是使用850nm等单一近红外光谱波段或远红外热成像,范围为8-14μm。这将限制仅从手背图像中提取手静脉。然而,手背包含更多的特征,如皮肤的纹理、色素痣和各种发色团。因此,使用一个光谱波段无法提取所有可能的手背特征。为了解决这一问题,本文提出了一种基于高光谱的手背识别系统。首先,设计了一种新型高光谱采集装置,建立了包含53个光谱的手背高光谱数据库;其次,从所有光谱手背图像中提取感兴趣的区域。然后,应用分割的局部二值模式进行特征表示,提取手背纹理和静脉特征;最后,利用最近邻分类器进行识别。为了验证所提出的系统,对所有光谱波段(单独)以及可见光和近红外波长的组合进行了广泛的实验,使用120个人进行识别和验证。600nm和860nm光谱组合的鉴别精度最高,为0.998,而同一光谱组合的鉴别EER最低,为0.049。
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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