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首页> 外文期刊>Procedia Computer Science >Offline Signature Recognition and Verification System using Efficient Fuzzy Kohonen Clustering Network (EFKCN) Algorithm
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Offline Signature Recognition and Verification System using Efficient Fuzzy Kohonen Clustering Network (EFKCN) Algorithm

机译:使用高效模糊kohonen聚类网络(EFKCN)算法的离线签名识别和验证系统

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Research on offline signature recognition still has not shown satisfactory results as the results of recent research. Therefore this study aims to proposed an offline signature recognition and verification system which employed an efficient fuzzy Kohonen clustering networks (EFKCN) 1 algorithm. The proposed recognition system and signature verification system consist of five stages including data acquisition, image processing, data normalization, clustering, and evaluation. The recognition of signature patterns using the clustering method with the EFKCN algorithm shows relatively better result with 70% accuracy compared to the accuracy of previous research results 2 which is 53%, and a good signature recognition result can be developed to assist the verification system as well as the personal data verification system as made in this study.
机译:关于离线签名识别的研究仍未显示出令人满意的结果作为最近研究的结果。因此,本研究旨在提出了一种离线签名识别和验证系统,该识别和验证系统采用了一种高效的模糊kohonen聚类网络(EFKCN)1算法。所提出的识别系统和签名验证系统包括五个阶段,包括数据采集,图像处理,数据标准化,聚类和评估。使用具有EFKCN算法的聚类方法的签名模式的识别显示,与先前研究结果2的精度相比,70%的精度相比,可以开发出良好的签名识别结果,以帮助验证系统以及本研究中的个人数据验证系统。

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