Online Signature Verification Based on Generative Models.

E Argones Rua, J L Alba Castro
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引用次数: 68

Abstract

The success of generative models for online signature verification has motivated many research works on this topic. These systems may use hidden Markov models (HMMs) in two different modes: user-specific HMM (US-HMM) and user-adapted universal background models (UBMs) (UA-UBMs). Verification scores can be obtained from likelihood ratios and a distance measure on the Viterbi decoded state sequences. This paper analyzes several factors that can modify the behavior of these systems and which have not been deeply studied yet. First, we study the influence of the feature set choice, paying special attention to the role of dynamic information order, suitability of feature sets on each kind of generative model-based system, and the importance of inclination angles and pressure. Moreover, this analysis is also extended to the influence of the HMM complexity in the performance of the different approaches. For this study, a set of experiments is performed on the publicly available MCYT-100 database using only skilled forgeries. These experiments provide interesting outcomes. First, the Viterbi path evidences a notable stability for most of the feature sets and systems. Second, in the case of US-HMM systems, likelihood evidence obtains better results when lowest order dynamics are included in the feature set, while likelihood ratio obtains better results in UA-UBM systems when lowest dynamics are not included in the feature set. Finally, US-HMM and UA-UBM systems can be used together for improved verification performance by fusing at the score level the Viterbi path information from the US-HMM system and the likelihood ratio evidence from the UA-UBM system. Additional comparisons to other state-of-the-art systems, from the ESRA 2011 signature evaluation contest, are also reported, reinforcing the high performance of the systems and the generality of the experimental results described in this paper.

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基于生成模型的在线签名验证。
在线签名验证生成模型的成功激发了对该主题的许多研究工作。这些系统可以在两种不同的模式下使用隐马尔可夫模型(HMM):用户特定的HMM (US-HMM)和用户适应的通用背景模型(ubm)。验证分数可以通过对Viterbi解码状态序列的似然比和距离度量获得。本文分析了影响这些系统行为的几个尚未深入研究的因素。首先,我们研究了特征集选择的影响,特别关注了动态信息顺序的作用,特征集在各种基于生成模型的系统中的适用性,以及倾角和压力的重要性。此外,本文还将分析扩展到HMM复杂度对不同方法性能的影响。在这项研究中,一组实验是在公开可用的MCYT-100数据库上进行的,只使用熟练的伪造。这些实验提供了有趣的结果。首先,Viterbi路径证明了大多数特性集和系统的显著稳定性。其次,在US-HMM系统中,当最低阶动态包含在特征集中时,似然证据获得了更好的结果,而在UA-UBM系统中,当最低阶动态不包含在特征集中时,似然比获得了更好的结果。最后,US-HMM和UA-UBM系统可以一起使用,通过在分数水平上融合来自US-HMM系统的Viterbi路径信息和来自UA-UBM系统的似然比证据来提高验证性能。此外,还报道了与ESRA 2011签名评估竞赛中其他最先进系统的比较,加强了系统的高性能和本文中描述的实验结果的通用性。
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