New Attributes Extraction System for Arabic Autograph as Genuine and Forged through a Classification Techniques

A. Ebrahim, H. Kolivand
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Abstract

The authentication of writers, handwritten autograph is widely realized throughout the world, the thorough check of the autograph is important before going to the outcome about the signer. The Arabic autograph has unique characteristics; it includes lines, and overlapping. It will be more difficult to realize higher achievement accuracy. This project attention the above difficulty by achieved selected best characteristics of Arabic autograph authentication, characterized by the number of attributes representing for each autograph. Where the objective is to differentiate if an obtain autograph is genuine, or a forgery. The planned method is based on Discrete Cosine Transform (DCT) to extract feature, then Spars Principal Component Analysis (SPCA) to selection significant attributes for Arabic autograph handwritten recognition to aid the authentication step. Finally, decision tree classifier was achieved for signature authentication. The suggested method DCT with SPCA achieves good outcomes for Arabic autograph dataset when we have verified on various techniques.
基于分类技术的阿拉伯签名真伪特征提取新系统
作者的身份验证,手写签名在世界范围内广泛实现,在去关于签名者的结果之前,对签名的彻底检查是重要的。阿拉伯签名具有独特的特点;它包括线条和重叠。实现更高的成就精度将更加困难。本项目关注上述困难,通过实现选定的阿拉伯签名认证的最佳特征,其特征是代表每个签名的属性数量。其目的是区分获得的签名是真的,还是伪造的。该方法基于离散余弦变换(DCT)提取特征,然后利用Spars主成分分析(SPCA)选择重要属性进行阿拉伯签名手写识别,辅助认证步骤。最后,实现了签名认证的决策树分类器。通过对各种技术的验证,提出的带有SPCA的DCT方法对阿拉伯语签名数据集取得了较好的效果。
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