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Feature fusion of palmprint and face via tensor analysis and curvelet transform

机译:通过张量分析和Curvelet变换进行掌纹和面部特征融合

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摘要

In order to improve the recognition accuracy of the unimodal biometric system and to address the problem of the small sam-ples recognition, a multimodal biometric recognition approach based on feature fusion level and curve tensor is proposed in this paper. The curve tensor approach is an extension of the tensor analysis method based on curvelet coefficients space. We use two kinds of biometrics: palmprint recognition and face recognition. All image features are extracted by using the curve tensor algorithm and then the normalized features are combined at the feature fusion level by using several fusion strategies. The k-nearest neighbour (KNN) classifier is used to determine the final biometric classification. The experimental results demonstrate that the proposed approach outperforms the unimodal solution and the proposed nearly Gaussian fusion (NGF) strategy has a better performance than other fusion rules.
机译:为了提高单峰生物识别系统的识别精度,解决小样本识别的问题,提出了一种基于特征融合水平和曲线张量的多峰生物识别方法。曲线张量方法是基于Curvelet系数空间的张量分析方法的扩展。我们使用两种生物识别技术:掌纹识别和面部识别。使用曲线张量算法提取所有图像特征,然后通过使用几种融合策略在特征融合级别上组合归一化特征。 k最近邻(KNN)分类器用于确定最终的生物特征分类。实验结果表明,所提出的方法优于单峰解,并且所提出的近高斯融合(NGF)策略比其他融合规则具有更好的性能。

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