Bio-inspired Expert System based on Genetic Algorithm for Printer Identification in Forensic Science

S. Darwish, Hany M. Elgohary
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引用次数: 1

Abstract

Printer identification models are provided for the goal of distinguishing the printer that produced a suspicious imprinted document. Source identification of a published document can easily be a significant procedure intended for the forensic science. The arising problem is that the extraction of many features of the printed document for printer identification sometimes increases time and reduces the classification accuracy since a lot of the document features may come to be repetitive and non-beneficial. Distinct combinatorial collection of features will need to be acquired in order to preserve the most effective fusion to accomplish the maximum accuracy. This paper presents an intelligent machine learning algorithm for printer identification that adopts both of texture features formulated from gray level co-occurrence matrix of the printed letter ''WOO'' and genetic heuristic search to select the optimal reduced feature set. This integration aims to achieve high classification accuracy based on small group of discriminative features. For classification, the system utilizes k-nearest neighbors (KNN) to recognize the source model of the printer for its simplicity. Experimental results validate that the suggested system has high taxonomy accuracy and requires less computation time.
基于遗传算法的法医学打印机识别仿生专家系统
提供打印机识别模型的目的是为了区分产生可疑印迹文档的打印机。已发表文件的来源鉴定很容易成为法医学的一个重要程序。出现的问题是,提取打印文档的许多特征用于打印机识别有时会增加时间并降低分类精度,因为许多文档特征可能是重复的和无益的。为了保持最有效的融合以达到最大的精度,需要获得不同的特征组合集合。提出了一种用于打印机识别的智能机器学习算法,该算法采用从打印字母“WOO”的灰度共生矩阵中得到的纹理特征和遗传启发式搜索来选择最优约简特征集。这种集成的目的是基于小组判别特征实现较高的分类精度。对于分类,系统使用k近邻(KNN)来识别打印机的源模型,因为它很简单。实验结果表明,该系统具有较高的分类准确率和较少的计算量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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