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首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >ON-LINE SIGNATURE VERIFICATION USING MULTIRESOLUTION FEATURE EXTRACTION AND SELECTION
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ON-LINE SIGNATURE VERIFICATION USING MULTIRESOLUTION FEATURE EXTRACTION AND SELECTION

机译:使用多分辨率特征提取和选择进行在线签名验证

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摘要

Handwritten signatures are a common behavioral biometric. They are widely accepted for identification purposes, such as approbating and authenticating legal documents and financial contracts. The main challenge of signature verification is the high dimensionality of the signature features dataset that makes the corroboration procedure computationally costly. In this paper, we reduced the dimension of the input data with almost no loss of information. To this end, wavelet transform and fusion techniques were used to propose a new set of features. In addition, we introduced an effective feature selection technique, which was based on applying a filter box to find the most informative parts of the data and eliminate redundancies. These methods improved operating speeds and reduced memory usage, as shown by our empirical studies using the Signature Verification Competition 2004 (SVC04) database. We obtained a competitive Equal Error Ratio (EER) of 2.5%, with considerably fewer features. These results suggest that the proposed package is comparable with the state-of-the-art methods while using a significantly smaller number of features.
机译:手写签名是一种常见的行为生物特征。它们被广泛用于识别目的,例如批准和认证法律文件和财务合同。签名验证的主要挑战是签名特征数据集的高维度,这使得证实过程的计算成本很高。在本文中,我们减小了输入数据的维数,而几乎没有信息丢失。为此,小波变换和融合技术被用来提出一组新的特征。此外,我们引入了一种有效的特征选择技术,该技术基于应用筛选器框来查找数据中信息最丰富的部分并消除冗余。正如我们使用2004年签名验证竞赛(SVC04)数据库进行的实证研究所示,这些方法提高了运行速度并减少了内存使用。我们获得了2.5%的竞争性均等错误率(EER),但功能却大大减少了。这些结果表明,所提出的程序包可与最新方法相媲美,同时使用的特征数量则少得多。

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