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A Study of Hand Back Skin Texture Patterns for Personal Identification and Gender Classification

机译:用于个人识别和性别分类的手背皮肤纹理图案的研究

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摘要

Human hand back skin texture (HBST) is often consistent for a person and distinctive from person to person. In this paper, we study the HBST pattern recognition problem with applications to personal identification and gender classification. A specially designed system is developed to capture HBST images, and an HBST image database was established, which consists of 1,920 images from 80 persons (160 hands). An efficient texton learning based method is then presented to classify the HBST patterns. First, textons are learned in the space of filter bank responses from a set of training images using the l1 -minimization based sparse representation (SR) technique. Then, under the SR framework, we represent the feature vector at each pixel over the learned dictionary to construct a representation coefficient histogram. Finally, the coefficient histogram is used as skin texture feature for classification. Experiments on personal identification and gender classification are performed by using the established HBST database. The results show that HBST can be used to assist human identification and gender classification.
机译:人的手背皮肤纹理(HBST)通常对于一个人而言是一致的,并且因人而异。在本文中,我们研究了HBST模式识别问题,并将其应用于个人识别和性别分类。开发了专门设计的系统来捕获HBST图像,并建立了HBST图像数据库,该数据库包含来自80人(160手)的1,920张图像。然后提出了一种有效的基于Texton学习的方法来对HBST模式进行分类。首先,使用基于l1最小化的稀疏表示(SR)技术,从一组训练图像中的滤波器组响应空间中学习了Texton。然后,在SR框架下,我们在学习字典的每个像素处表示特征向量,以构造表示系数直方图。最后,将系数直方图用作皮肤纹理特征进行分类。通过使用已建立的HBST数据库进行个人识别和性别分类的实验。结果表明,HBST可用于辅助人类识别和性别分类。

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