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首页> 外文期刊>Systems, Man, and Cybernetics, Part B: Cybernetics, IEEE Transactions on >Online Signature Verification With Support Vector Machines Based on LCSS Kernel Functions
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Online Signature Verification With Support Vector Machines Based on LCSS Kernel Functions

机译:基于LCSS内核功能的支持向量机在线签名验证

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摘要

In this paper, a new technique for online signature verification or identification is proposed. The technique integrates a longest common subsequences (LCSS) detection algorithm which measures the similarity of signature time series into a kernel function for support vector machines (SVM). LCSS offers the possibility to consider the local variability of signals such as the time series of pen-tip coordinates on a graphic tablet, forces on a pen, or inclination angles of a pen measured during a signing process. Consequently, the similarity of two signature time series can be determined in a more reliable way than with other measures. A proprietary database with signatures of 153 test persons and the SVC 2004 benchmark database are used to show the properties of the new SVM-LCSS. We investigate its parameterization and compare it to SVM with other kernel functions such as dynamic time warping (DTW). Our experiments show that SVM with the LCSS kernel authenticate persons very reliably and with a performance which is significantly better than that of the best comparing technique, SVM with DTW kernel.
机译:本文提出了一种在线签名验证或识别的新技术。该技术将可测量签名时间序列相似性的最长公共子序列(LCSS)检测算法集成到支持向量机(SVM)的内核函数中。 LCSS提供了考虑信号局部变化的可能性,例如图形输入板上笔尖坐标的时间序列,笔上的力或在签名过程中测得的笔的倾斜角度。因此,与其他度量相比,可以以更可靠的方式确定两个签名时间序列的相似性。具有153位测试人员签名的专有数据库和SVC 2004基准数据库用于显示新SVM-LCSS的属性。我们研究了它的参数化,并将其与具有其他内核功能(例如动态时间规整(DTW))的SVM进行比较。我们的实验表明,带有LCSS内核的SVM可以非常可靠地对人员进行身份验证,其性能明显优于最佳比较技术,带有DTW内核的SVM。

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