Abhijit Das, U. Pal, M. A. Ferrer-Ballester, M. Blumenstein
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引用次数: 25
摘要
本文提出了一种腕部静脉模式识别与验证系统。本文使用PUT数据库中的腕静脉图像,这些图像是在可见光谱中获得的。静脉图像只突出静脉图案区域,因此不需要分割。由于腕部静脉不明显,因此进行了图像增强。采用自适应直方图均衡化和离散Meyer小波增强血管模式。在特征提取方面,采用密集局部二值模式(Dense Local Binary pattern, D-LBP)进行特征提取。每个训练图像的D-LBP补丁描述符被用来形成一个特征包,用来生成训练模型。支持向量机(svm)用于分类。在我们的实验中获得了令人鼓舞的0.79%的等错误率(EER)。
In this piece of work a wrist vein pattern recognition and verification system is proposed. Here the wrist vein images from the PUT database were used, which were acquired in visible spectrum. The vein image only highlights the vein pattern area so, segmentation was not required. Since the wrist's veins are not prominent, image enhancement was performed. An Adaptive Histogram Equalization and Discrete Meyer Wavelet were used to enhance the vessel patterns. For feature extraction, the vein pattern is characterized with Dense Local Binary Pattern (D-LBP). D-LBP patch descriptors of each training image are used to form a bag of features, which was used to produce the training model. Support Vector Machines (SVMs) were used for classification. An encouraging Equal Error Rate (EER) of 0.79% was achieved in our experiments.