Robust Vein Recognition against Rotation Using Kernel Sparse Representation

Ali Nozaripour, Hadi Soltanizadeh
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引用次数: 4

Abstract

Sparse representation due to advantages such as noise-resistant and, having a strong mathematical theory, has been noticed as a powerful tool in recent decades. In this paper, using the sparse representation, kernel trick, and a different technique of the Region of Interest (ROI) extraction which we had presented in our previous work, a new and robust method against rotation is introduced for dorsal hand vein recognition. In this method, to select the ROI, by changing the length and angle of the sides, undesirable effects of hand rotation during taking images have largely been neutralized. So, depending on the amount of hand rotation, ROI in each image will be different in size and shape. On the other hand, because of the same direction distribution on the dorsal hand vein patterns, we have used the kernel trick on sparse representation to classification. As a result, most samples with different classes but the same direction distribution will be classified properly. Using these two techniques, lead to introduce an effective method against hand rotation, for dorsal hand vein recognition. Increases of 2.26% in the recognition rate is observed for the proposed method when compared to the three conventional SRC-based algorithms and three classification methods based sparse coding that used dictionary learning.
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基于核稀疏表示的抗旋转鲁棒静脉识别
稀疏表示由于具有抗噪声和强大的数学理论等优点,在近几十年来已被视为一种强大的工具。在本文中,利用稀疏表示、核技巧和我们在先前工作中提出的不同的感兴趣区域(ROI)提取技术,提出了一种新的、抗旋转的鲁棒手背静脉识别方法。在这种方法中,通过改变侧面的长度和角度来选择ROI,在很大程度上消除了拍摄图像时手旋转的不良影响。因此,根据手的旋转量,每个图像中的ROI在大小和形状上都会有所不同。另一方面,由于手背静脉图案的方向分布相同,我们使用了稀疏表示的核技巧进行分类。因此,大多数具有不同类别但方向分布相同的样本将被正确分类。利用这两种技术,介绍了一种有效的防止手部旋转的手背静脉识别方法。与使用字典学习的三种传统的基于SRC的算法和三种基于稀疏编码的分类方法相比,所提出的方法的识别率提高了2.26%。
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