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Identity verification using shape and geometry of human hands

机译:使用人的手的形状和几何体进行身份验证

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摘要

A multimodal biometric system for personal identity verification is proposed using hand shape and hand geometry in this paper. Shape and geometry features are derived with the help of only contour of the hand image for which only one image acquisition device is sufficient. All the processing is done with respect to a stable reference point at wrist line which is more stable as compared to the centroid against the finger rotation and peaks and valleys determination. Two shape based features are extracted by using the distance and orientation of each point of hand contour with respect to the reference point followed by wavelet decomposition to reduce the dimension. Seven distances are used to encode the geometrical information of the hand. Shape and geometry based features are fused at score levels and their performances are evaluated using standard ROC curves between false acceptance rate, true acceptance rate, equal error rate and decidability index. Different similarity measures are used to examine the accuracy of the introduced method. Performance of system is analyzed for shape based (distance and orientation) and geometrical features individually as well as for all possible combinations of feature and score level fusion. The proposed features and fusion methods are studied over two hand image datasets, (1) JUET contact database of 50 subjects having 10 templates each and (2) IITD contactless dataset of 240 subjects with 5 templates each. The proposed method outperforms other approaches with the best 0.31% of EER.
机译:本文提出了一种利用手形和手形来验证个人身份的多模式生物特征识别系统。形状和几何特征仅借助于手图像的轮廓导出,对于该轮廓,仅一个图像采集装置就足够了。所有处理均针对腕线处的稳定参考点进行,相对于针对手指旋转的质心和峰谷确定,该参考点更稳定。通过使用手轮廓的每个点相对于参考点的距离和方向来提取两个基于形状的特征,然后进行小波分解以减小尺寸。七个距离用于编码手的几何信息。在得分级别融合基于形状和几何的特征,并使用标准ROC曲线在错误接受率,真实接受率,相等错误率和可判定性指标之间评估其性能。使用不同的相似性度量来检查所引入方法的准确性。分别针对基于形状的(距离和方向)和几何特征以及特征和得分级别融合的所有可能组合,分析系统的性能。在两个手图像数据集上研究了提出的特征和融合方法,(1)50个对象的JUET联系人数据库,每个对象有10个模板;(2)240个对象的IITD非接触数据集,每个都有5个模板。所提出的方法以EER最好的0.31%胜过其他方法。

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