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首页> 外文期刊>International Journal of Engineering and Technology >A novel Fingervein Recognition System based on Monogenic Local Binary Pattern Features
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A novel Fingervein Recognition System based on Monogenic Local Binary Pattern Features

机译:基于单基因局部二元模式特征的新型手指静脉识别系统

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摘要

As a new approach to human identification, fingervein recognition is becoming an active biometric recognition mode. This paper focuses on fingervein recognition system. First, a preprocessing algorithm is used to enhance each fingervein image. Then, an improvement technique of feature extraction based on Monogenic Local Binary Pattern (MLBP) is presented. This novel metric integrates the conventional LBP (Local Binary Pattern) with the other two rotation invariant measures (local phase and local surface type) to lower the computational complexity while slightly increasing the matching accuracy. Experimental results show that the proposed algorithm offres best performances in fingervein recognition. In fact, the area under curve of proposed approach has very close to unity (0.91)
机译:手指静脉识别作为一种新的人类识别方法,正在成为一种活跃的生物识别模式。本文重点研究了指静脉识别系统。首先,使用预处理算法来增强每个手指静脉图像。然后,提出了一种基于单基因局部二值模式(MLBP)的特征提取改进技术。这种新颖的度量标准将传统的LBP(局部二进制模式)与其他两个旋转不变量度(局部相位和局部表面类型)集成在一起,以降低计算复杂度,同时略微提高匹配精度。实验结果表明,该算法在手指静脉识别中具有最佳性能。实际上,所提出方法的曲线下面积非常接近于统一(0.91)

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