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Approaching the intra-class variability in multi-script static signature evaluation

机译:在多脚本静态签名评估中处理类内变异

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As an emerging issue, multi-script signature verification is a recent challenge for current Automatic Signature Verification (ASV) systems. Relevant differences are presented in the morphology and lexicon of the signature images written in different scripts, such as used symbols, shape of the signatures, legibility, etc. These peculiarities could reduce the success of ASV systems, especially those which were originally designed for only one kind of script. However, one common feature among scripts in ASV is the fact that the greater the number of signatures that are used for training, the better the expected performance. In this work, we propose a method inspired by observations from the neuromotor equivalence theory to artificially enlarge the signature images used to train a state-of-the-art static signature classifier. Experimental results are obtained by using three static signature datasets derived from completely different scripts: Western, Bengali and Devanagari. Our results suggest that the cognitive-inspired model, which aims to duplicate static signatures, tends toward intra-class variability of signatures written in different scripts; the model's beneficial impact is seen in signature verification tests.
机译:作为一个新出现的问题,多脚本签名验证是当前自动签名验证(ASV)系统的最新挑战。在用不同的脚本书写的签名图像的形态和词典中存在相关的差异,例如使用的符号,签名的形状,易读性等。这些特性可能会降低ASV系统的成功率,尤其是那些最初仅用于ASV系统的系统。一种脚本。但是,ASV脚本之间的一个共同特征是,用于训练的签名数量越多,预期性能就越好。在这项工作中,我们提出了一种方法,该方法受神经运动等效理论的观察启发,可以人为地放大用于训练最新静态签名分类器的签名图像。通过使用来自完全不同的脚本的三个静态签名数据集获得实验结果:Western,Bengali和Devanagari。我们的结果表明,旨在复制静态签名的认知启发模型趋向于使用不同脚本编写的签名的类内可变性。该模型的有益影响可以在签名验证测试中看到。

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