基于聚类技术的离线签名验证

Varun Pandya
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引用次数: 2

摘要

签名验证是最基本、应用最广泛的生物识别技术之一,在日常生活中有着广泛的应用。然而,由于与签名相关的差异以及伪造真实签名的技巧和准确性,正确区分签名是真品还是伪造品也是非常复杂和困难的。该方法利用聚类分层聚类技术从扫描图像中提取和分析手写签名的特征。在对图像进行预处理和聚类后,根据聚类内距离计算的误差阈值,对签名进行真伪分类。该方法可靠、快速,不需要大型数据集,因为它是基于一种无监督的方法,并且在处理熟练的伪造时显示出有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Offline Signature Verification using Clustering Technique
Signature verification is one of the most basic and heavily used biometric which finds its application in many fields in the day to day life. However, it is also very complex and difficult to correctly classify a signature as genuine or forged because of the discrepancies associated with a signature and due to the skill and precision with which a forgery of the genuine signature is done. The proposed method is based on extraction and analysis of the features of the handwritten signature from the scanned images using Agglomerative Hierarchical Clustering technique. After pre-processing of the images and formation of clusters, based upon the error threshold, which is calculated using the intra-cluster distances, the signatures are classified as either genuine or forged. The proposed method is reliable, quick and does not require large datasets since it is based on an unsupervised approach and has shown promising results while dealing with skilled forgeries.
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