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An Efficient Online Signature Verification Based on Feature Fusion and Interval Valued Representation of Writer Specific Features

机译:基于特征融合和作者特定特征的区间值表示的高效在线签名验证

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Online Signature Verification (OSV) is a pattern recognition problem, which involves analysis of discrete-time signals of signature samples to classify them as genuine or forgery. One of the core difficulties in designing online signature verification (OSV) system is the inherent intra-writer variability in genuine handwritten signatures, combined with the likelihood of close resemblances and dissimilarities of skilled forgeries with the genuine signatures. To address this issue, in this manuscript, we emphasize the concept of writer dependent parameter fixation (i.e. features, decision threshold and feature dimension) using interval valued representation grounded on feature fusion. For an individual writer, a subset of discriminative features is selected from the original set of features using feature clustering techniques. This is at variance with the writer independent models in which common features are used for all the writers. To practically exhibit the efficiency of the proposed model, thorough experiments are carried out on benchmarking online signature datasets MCYT-100 (DB1), MCYT-330 (DB2) consist of signatures of 100, 330 individuals respectively. Experimental result confirms the efficiency of writer specific parameters for online signature verification. The EER value, the model computes, is lower compared to various latest signature verification models.
机译:在线签名验证(OSV)是一种模式识别问题,涉及对签名样本的离散时间信号进行分析以将其分类为真实或伪造。设计在线签名验证(OSV)系统的核心困难之一是,真正的手写签名固有的书写者内部变异性,再加上与真实签名非常相似和熟练的伪造品相异的可能性。为了解决这个问题,在本手稿中,我们强调使用基于特征融合的区间值表示法来依赖作者的参数固定(即特征,决策阈值和特征维)的概念。对于单个作者,使用特征聚类技术从原始特征集中选择区分特征的子集。这与独立于作者的模型有所不同,在后者中,所有作者都使用相同的功能。为了切实展示所提出模型的效率,对基准在线签名数据集MCYT-100(DB1),MCYT-330(DB2)分别由100个,330个个人的签名组成进行了全面的实验。实验结果证实了用于在线签名验证的书写者特定参数的效率。该模型计算出的EER值低于各种最新的签名验证模型。

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