Enhancement of glove-based approach to dynamic signature verification by reducing number of sensors

S. Sayeed, N. Kamel, R. Besar
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引用次数: 2

Abstract

Data glove is a new dimension in the field of virtual reality environments, initially designed to satisfy the stringent requirements of modern motion capture and animation professionals. Utilizing the multiple degrees of freedom offered by the data glove for each finger and the hand, a novel online signature verification technique using Singular Value Decomposition (SVD) for signature classification and verification is presented. The proposed technique is based on the SVD in finding r-singular vectors sensing the maximal energy of glove data matrix A, called principal subspace, and thus account for most of the variation in the original data, so the effective dimensionality of the data can be reduced. Having identified data glove signature through its r-principal subspace, the authenticity is then can be obtained by calculating the angles between the different subspaces. In this paper we try to ponder a significant analysis of accuracy and performance of dynamic signature identification and verification using data glove with reduced number of sensors from 14 to 5 to achieve a significant level of accuracy. The SVD-based signature verification technique is appears to be promising with the best combination of selected 5 prominent sensors instead of select all the 14-seonsor based data sets and the best performance is shown to be able to produce 2.33% of Equal Error Rate (EER).
通过减少传感器数量来增强基于手套的动态签名验证方法
数据手套是虚拟现实环境领域的一个新维度,最初是为了满足现代动作捕捉和动画专业人员的严格要求而设计的。利用数据手套对手指和手的多重自由度,提出了一种基于奇异值分解(SVD)的在线签名分类与验证方法。该技术基于SVD寻找r-奇异向量,感知手套数据矩阵A的最大能量,称为主子空间,因此可以解释原始数据的大部分变化,因此可以降低数据的有效维数。通过数据手套签名的r主子空间识别数据手套签名,然后通过计算不同子空间之间的夹角来获得数据手套签名的真实性。在本文中,我们试图考虑使用将传感器数量从14个减少到5个的数据手套对动态签名识别和验证的准确性和性能进行重要分析,以达到显着的准确性水平。基于奇异值分析(svd)的签名验证技术在选择5个突出传感器的最佳组合而不是选择所有基于14个传感器的数据集时似乎很有希望,最佳性能显示能够产生2.33%的等错误率(EER)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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