调查文件的泰文手写验证系统

Narit Hnoohom, Narumol Chumuang, M. Ketcham
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引用次数: 12

摘要

法医生物学是生物学在执法中的应用。手写行为是一种可以用来识别所有权的生物特征。本文提出了一种泰文手写体文档验证算法。这项工作的目的是在调查中证明笔迹。本文提出的主要问题分为数据准备、分类和结果三个过程。相应的,在分类中采用两步神经网络算法求解,具有较高的准确率。然后,创建笔迹模型。最后,我们定义了将未知手写体与模型进行比较的标准。结果表明,高度精度为90.00%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Thai Handwritten Verification System on Documents for the Investigation
Forensic biology is the application of biology to law enforcement. Handwriting behavior is one of the biometrics that can be used to identify those who are ownership. This paper proposes an algorithm for Thai handwritten verification on documents. This work intended to prove the handwriting in the investigation. The main issue presented in this paper is divided into three processes including data preparation, classification and results. Consequential, two steps of neuron network algorithm are used to resolve in classification with high accuracy. Then, the models of handwriting are created. Finally, we define criterion to compare between unknown handwritten with our model. The result shows height accuracy 90.00%.
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