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An On-Line Signature Verification System Based on Fusion of Local and Global Information

机译:基于本地和全球信息融合的在线签名验证系统

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摘要

An on-line signature verification system exploiting both local and global information through decision-level fusion is presented. Global information is extracted with a feature-based representation and recognized by using Parzen Windows Classifiers. Local information is extracted as time functions of various dynamic properties and recognized by using Hidden Markov Models. Experimental results are given on the large MCYT signature database (330 signers, 16500 signatures) for random and skilled forgeries. Feature selection experiments based on feature ranking are carried out. It is shown experimentally that the machine expert based on local information outperforms the system based on global analysis when enough training data is available. Conversely, it is found that global analysis is more appropriate in the case of small training set size. The two proposed systems are also shown to give complementary recognition information which is successfully exploited using decision-level score fusion.
机译:提出了一种通过决策级融合利用本地和全局信息的在线签名验证系统。全局信息以基于功能的表示形式提取,并通过使用Parzen Windows分类器进行识别。提取本地信息作为各种动态属性的时间函数,并通过使用隐马尔可夫模型进行识别。在大型MCYT签名数据库(330个签名者,16500个签名)上给出了针对随机和熟练伪造的实验结果。进行了基于特征等级的特征选择实验。实验表明,当有足够的训练数据时,基于本地信息的机器专家的性能优于基于全局分析的系统。相反,发现在训练集规模较小的情况下,全局分析更为合适。还显示了这两个提议的系统提供了互补的识别信息,该信息可通过决策级分数融合成功地加以利用。

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