Palmprint Recognition Method Based on Adaptive Fusion

Shuwen Zhang
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引用次数: 2

Abstract

Bimodal biometrics can overcomes some kinds of limitations of single biometrics and obtain a higher accuracy than single biometrics. In this paper, we propose a palm print recognition method based on the adaptive fusion of 2D and 3D palm print images. 3D palm print contains the depth information of the palm surface, while 2D palm print contains plenty of textures. Firstly, the biometric trait can be obtained by an adaptive fusion method. Combine the 2D and 3D Palm print images together by a complex vector. In this phase, we use the automatic weighted combination strategy. We assume that any test sample can be expressed as a linear combination of all the training samples in complex space. Then we can find M near neighbors of the test sample by solving the linear system and use the effect of the M near neighbors to perform classification. The experimental results show that the proposed method can obtain a higher accuracy.
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基于自适应融合的掌纹识别方法
双峰生物识别技术可以克服单一生物识别技术的局限性,获得比单一生物识别技术更高的精度。本文提出了一种基于二维和三维掌纹图像自适应融合的掌纹识别方法。3D掌纹包含了手掌表面的深度信息,而2D掌纹包含了大量的纹理。首先,采用自适应融合方法获取生物特征;通过一个复杂的矢量将2D和3D掌纹图像组合在一起。在这个阶段,我们使用自动加权组合策略。我们假设任何测试样本都可以表示为复空间中所有训练样本的线性组合。然后我们可以通过求解线性系统找到测试样本的M个近邻,并利用M个近邻的效应进行分类。实验结果表明,该方法可以获得较高的精度。
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