Büşra Baykal, Tuğçe Özge Aktaş, Oktay Yildiz
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引用次数: 1

摘要

本文开发了一种低成本、高效的离线签名验证系统。系统设计分为4个步骤:数据采集、预处理、特征提取和签名验证。预处理阶段分为灰度化、归一化、阈值化和图像骨架4步完成。归一化由最近邻插值执行。阈值步骤由Otsu算法执行。在最后阶段;使用张算法对图像进行骨架提取。在系统的第三阶段,使用特征提取步骤、胡氏不变矩、区域特征和离散小波变换。生成的数据集已经分别测试了所选的训练算法以及签名识别和签名验证。通过观察,发现SVM算法对签名验证的效果最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Makİne Öğrenmesİ yÖntemlerİ İle tomatİk ÇevrİmdiŞi İmza tanima ve doğrulama Sistemİ
In this work, a low-cost and efficient, offline signature verification system was developed. The system is designed to be composed of 4 steps: data collection, preprocessing, feature extraction and signature verification. The pre-processing phase is completed in 4 steps: graying, normalization, thresholding and image skeleton. Normalization is performed by nearest neighbor interpolation. The thresholding step is performed with the Otsu algorithm. In the last stage; The skeleton of the image is performed using the Zhang algorithm. In the third stage of the system, the feature extraction step, the Hu's invariant moments, regional features and the discrete wavelet transform were used. The generated data set has been tested separately for the selected training algorithms and for signature recognition and signature verification. As a result of the observations made, it is observed that the SVM algorithm gave the best result for signature verification.
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