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A multiple classifiers-based approach to palmvein identification

机译:一种基于分类的掌上鉴定方法

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The usual trend for the conventional palmvein recognition techniques is first to extract discriminative hand-crafted feature representations from the raw images, and then feed a classifier with them. Unfortunately, it is not yet clear how the effectiveness of such features may be held in case of a large user population or in environments where the variability among acquisitions of the same person may increase. In order to face with this problem, it may be considered that the use of multiple classifiers may increase the recognition performance with respect to that of the best individual classifier, and also may handle the problem of an effective feature extraction step. In this paper, we explore the ensemble classifier approach based on Random Subspace Method (RSM), where the basic feature space is derived after a preliminary feature reduction step on the source image, and compare results achieved with and without the use of hand-crafted features. Experimental results allow us concluding that this approach leads to better results under different environmental conditions.
机译:对于常规palmvein识别技术通常的趋势是首先从原始图像中提取判别手工制作的特征表示,再喂分类它们。不幸的是,它目前尚不清楚怎样的这些特征的有效性可以在庞大的用户群的情况下,或者在同一个人的并购中的变异可能会增加的环境中举行。为了脸上带着这一问题,可以考虑采用多分类可以提高识别性能相对于,最好单独分类,并且还可以处理的有效特征提取步骤的问题。在本文中,我们探索基于随机子空间法(RSM),其中,所述基本特征空间在源图像上的初步特征还原步骤后得到的综合识别方法,以及比较使用和不使用取得的结果的手工制作的特征。实验结果使我们得出结论认为,这种方法会导致不同的环境条件下更好的结果。

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