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Feature-level Fusion of Global and Local Features for Finger-vein Recognition

机译:手指静脉识别的全局和本地特征的特征级融合

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Multi-features system, as an effective method to improve the performance of biometric-based identification, has been one of the hot research fields on personal identification. In this paper, a novel method of finger-vein recognition based on the feature level fusion of global and local features is proposed. First, local texture information is characterized as the local feature using a Gabor filter framework, and the global feature is extracted by moment invariant method. Then, global-local feature vectors (GLFVs) from finger-veins are generated using canonical correlation analysis (CCA) and a novel weighted fusion strategy. Based on GLFVs, the nearest neighborhood classifier is employed for classification finally. Experimental results show that the proposed method has good performance in personal identification.
机译:多特色系统,作为提高基于生物识别识别性能的有效方法,是个人识别的热门研究领域之一。本文提出了一种基于全局和局部特征特征级别融合的手指静脉识别的新方法。首先,本地纹理信息的特征在于使用Gabor滤波器框架的本地特征,并且通过时刻不变方法提取全局功能。然后,使用CONONICAL相关分析(CCA)和新加权融合策略产生来自手指静脉的全局局部特征向量(GLFV)。基于GLFV,最终邻域分类器最终用于分类。实验结果表明,该方法在个人识别方面具有良好的性能。

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