增强的在线签名验证基于熟练的伪造检测使用Sigma-LogNormal特征

M. Gomez-Barrero, Javier Galbally, Julian Fierrez, J. Ortega-Garcia, R. Plamondon
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引用次数: 30

摘要

在线签名验证的最大挑战之一是检测熟练的伪造。本文提出一种基于人体快速运动的运动学理论及其相关的Sigma LogNormal模型的新方案,以提高在线签名验证系统的性能。该方法结合了基于dtw的系统在验证任务中的高性能,以及对快速人体运动的运动学理论进行熟练伪造检测的高潜力。实验是在公开的BiosecurID多模式数据库上进行的,其中包括400名受试者。结果表明,基于dtw的系统无论对熟练伪造还是随机伪造,性能都有所提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced on-line signature verification based on skilled forgery detection using Sigma-LogNormal Features
One of the biggest challenges in on-line signature verification is the detection of skilled forgeries. In this paper, we propose a novel scheme, based on the Kinematic Theory of rapid human movements and its associated Sigma LogNormal model, to improve the performance of on-line signature verification systems. The approach combines the high performance of DTW-based systems in verification tasks, with the high potential for skilled forgery detection of the Kinematic Theory of rapid human movements. Experiments were carried out on the publicly available BiosecurID multimodal database, comprising 400 subjects. Results show that the performance of the DTW-based system improves for both skilled and random forgeries.
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