Study on Finger-Articular Back Texture recognition

Changling Wang, Shangling Song, Fengrong Sun, Liangmo Mei
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引用次数: 2

Abstract

Humanpsilas finger-articular back texture(FABT), as a novel biometric identification pattern, has been studied. As a basis set of FABT space, eigenjoints are extracted by principle component analysis. The features of each finger-articular back texture are computed by projecting on the related eigenjoint space. In matching stage, the decision are made by using nearest neighbor classifier based on Mahalanobis distance. The results show that: back finger- joint texture has high uniqueness in terms of high recognition accuracy rate (97.57 percent); the inter-class and intra-class have good separability; and recognition speed is fast enough for real time identification.
手指关节背部纹理识别的研究
人爪指关节背纹理(FABT)作为一种新的生物特征识别模式进行了研究。作为FABT空间的基集,通过主成分分析提取特征关节。通过在相关特征关节空间上的投影计算每个手指关节背纹理的特征。在匹配阶段,采用基于马氏距离的最近邻分类器进行决策。结果表明:手指背关节纹理具有较高的唯一性,识别准确率高达97.57%;类间和类内具有良好的可分性;识别速度快,可实现实时识别。
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