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Online Signature Verification Based on a Single Template via Elastic Curve Matching

机译:基于单个模板的弹性曲线匹配在线签名验证

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摘要

Person verification using online handwritten signatures is one of the most widely researched behavior-biometrics. Many signature verification systems typically require five, ten, or even more signatures for an enrolled user to provide an accurate verification of the claimed identity. To mitigate this drawback, this paper proposes a new elastic curve matching using only one reference signature, which we have named the curve similarity model (CSM). In the CSM, we give a new definition of curve similarity and its calculation method. We use evolutionary computation (EC) to search for the optimal matching between two curves under different similarity transformations, so as to obtain the similarity distance between two curves. Referring to the geometric similarity property, curve similarity can realize translation, stretching and rotation transformation between curves, thus adapting to the inconsistency of signature size, position and rotation angle in signature curves. In the matching process of signature curves, we design a sectional optimal matching algorithm. On this basis, for each section, we develop a new consistent and discriminative fusion feature extraction for identifying the similarity of signature curves. The experimental results show that our system achieves the same performance with five samples assessed with multiple state-of-the-art automatic signature verifiers and multiple datasets. Furthermore, it suggests that our system, with a single reference signature, is capable of achieving a similar performance to other systems with up to five signatures trained.
机译:使用在线手写签名进行人员验证是行为生物学最广泛研究的方法之一。许多签名验证系统通常要求注册用户五个,十个甚至更多个签名,以提供对所声明身份的准确验证。为了减轻这个缺点,本文提出了一种仅使用一个参考特征的新的弹性曲线匹配,我们将其命名为曲线相似性模型(CSM)。在CSM中,我们给出了曲线相似度的新定义及其计算方法。我们使用进化计算(EC)来搜索不同相似度变换下两条曲线之间的最佳匹配,从而获得两条曲线之间的相似距离。参照几何相似度特性,曲线相似度可以实现曲线之间的平移,拉伸和旋转变换,从而适应签名曲线中签名大小,位置和旋转角度的不一致。在签名曲线的匹配过程中,设计了一种截面最优匹配算法。在此基础上,针对每个部分,我们开发了一种新的一致性和区分性融合特征提取,以识别特征曲线的相似性。实验结果表明,我们的系统通过五个样本(使用多个最新的自动签名验证器和多个数据集进行评估)可以达到相同的性能。此外,它表明我们的系统具有单个参考签名,能够与其他经过最多五个签名训练的系统实现类似的性能。

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