创新的离群值去除技术提高智能社会签名认证的准确性

Anindita Desarkar, Shisna Sanyal, A. Baidya, Ajanta Das, C. Chaudhuri
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引用次数: 1

摘要

智慧社会是一个被赋予权力的社会,它可以通过使用最新的创新和技术来改善公民的生活。这种改进可以发生在几个方面,其中安全性是一个主要方面。不一致和伪造是非常常见的现象,手写签名经常被保存下来,以训练分类器对一个人进行身份验证。一开始,异常值的去除明显地提高了训练质量和分类器。本文讨论了从可靠签名中机械化分离质量差的真实签名的问题。在这种情况下,利用聚类、分类和统计技术进行离群值处理的机器学习算法已经实现。去除异常值后的后续性能评估反映了真正和真负识别率准确率的提高。性能评估表明,在构建安全、可靠和智能社会的背景下,认证精度与伪造精度存在显著差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Innovative Outlier Removal Techniques to Enhance Signature Authentication Accuracy for Smart Society
A smart society is an empowered society, which can improve the lives of its citizens by using the latest innovations and technologies. This improvement can happen in several dimensions out of which security is a major one. Inconsistency and forgery are very common phenomenon where handwritten signatures are often preserved for training a classifier to authenticate a person. The removal of outliers, at the outset, obviously improves the quality of training and the classifier. The present article deals with the mechanized segregation of the poor-quality authentic signatures from reliable ones. Machine learning algorithms for outlier handling utilizing clustering, classification and statistical techniques have been implemented in this context. Subsequent performance evaluation after outlier removal reflects improvement of both true positive and true negative recognition rate accuracy. The performance evaluation presents the significant differences between authentication accuracy and forgery accuracy in the context of building a safe, secure and smart society.
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