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首页> 外文期刊>EURASIP journal on advances in signal processing >Online Signature Verification Using Fourier Descriptors
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Online Signature Verification Using Fourier Descriptors

机译:使用傅立叶描述符进行在线签名验证

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摘要

We present a novel online signature verification system based on the Fast Fourier Transform. The advantage of using the Fourier domain is the ability to compactly represent an online signature using a fixed number of coefficients. The fixed-length representation leads to fast matching algorithms and is essential in certain applications. The challenge on the other hand is to find the right preprocessing steps and matching algorithm for this representation. We report on the effectiveness of the proposed method, along with the effects of individual preprocessing and normalization steps, based on comprehensive tests over two public signature databases. We also propose to use the pen-up duration information in identifying forgeries. The best results obtained on the SUSIG-Visual subcorpus and the MCYT-100 database are 6.2% and 12.1% error rate on skilled forgeries, respectively. The fusion of the proposed system with our state-of-the-art Dynamic Time Warping (DTW) system lowers the error rate of the DTW system by up to about 25%. While the current error rates are higher than state-of-the-art results for these databases, as an approach using global features, the system possesses many advantages. Considering also the suggested improvements, the FFT system shows promise both as a stand-alone system and especially in combination with approaches that are based on local features.
机译:我们提出一种基于快速傅立叶变换的新颖的在线签名验证系统。使用傅立叶域的优点是能够使用固定数量的系数紧凑地表示在线签名。固定长度表示法会导致快速匹配算法,并且在某些应用中必不可少。另一方面,挑战在于为该表示找到正确的预处理步骤和匹配算法。基于对两个公共签名数据库的全面测试,我们报告了该方法的有效性以及各个预处理和规范化步骤的效果。我们还建议使用起笔持续时间信息来识别伪造品。在SUSIG-Visual子集和MCYT-100数据库上获得的最佳结果分别是熟练造假的6.2%和12.1%的错误率。拟议的系统与我们最新的动态时间规整(DTW)系统融合在一起,可将DTW系统的错误率降低多达25%。尽管当前的错误率高于这些数据库的最新结果,但作为使用全局功能的方法,该系统具有许多优势。还考虑了建议的改进,FFT系统显示了作为独立系统的前景,特别是结合了基于局部特征的方法。

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