Hand-Based Feature Level Fusion for Single Sample Biometrics Recognition

Yanqiang Zhang, Dongmei Sun, Z. Qiu
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引用次数: 28

Abstract

Single sample biometrics recognition may lead to bad recognition result in real-world applications. To solve this problem, we present a novel feature level biometrics fusion approach by combining two kinds of biometrics: palmprint and middle finger image, both of which can be acquired from one hand image. We first utilize a manifold learning method to find the local embedding subspaces of palmprint and middle finger images, and then use principal component analysis (PCA) to extract the concatenated feature. To do so, a well performance could be obtained for the reason that the local structures of single model biometrics are preserved, while the redundancies between them are reduced. Comparing with single modal biometrics and score level fusion, the experimental results illustrated the average recognition rate of the proposed approach was significantly promoted to 98.71%. The performance comparisons in terms of cumulative match characteristic (CMC) curves for different recognition approaches were also presented to demonstrate the strength of the proposed fusion scheme.
单样本生物特征识别的手部特征融合
单样本生物识别在实际应用中可能会导致较差的识别结果。为了解决这一问题,我们提出了一种新的特征级生物特征融合方法,该方法将两种生物特征相结合:掌纹和中指图像,这两种生物特征都可以从一个手的图像中获得。首先利用流形学习方法找到掌纹和中指图像的局部嵌入子空间,然后利用主成分分析(PCA)提取拼接特征。这样做,可以获得良好的性能,因为它保留了单个模型的局部结构,同时减少了它们之间的冗余。实验结果表明,与单模态生物识别和评分水平融合相比,该方法的平均识别率显著提高到98.71%。利用累积匹配特征(CMC)曲线对不同识别方法的性能进行了比较,以证明所提出的融合方案的强度。
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