Inkjet printer prediction under complicated printing conditions based on microscopic image features

IF 1.9 4区 医学 Q2 MEDICINE, LEGAL
Yan-ling Liu , Zi-feng Jiang , Guang-lei Zhou , Ya-wen Zhao , Yu-yu Hao , Jing-yuan Xu , Xu Yang , Xiao-hong Chen
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引用次数: 0

Abstract

A novel technique is introduced to predict the printer model used to produce a given document. Samples containing only a few letters printed under varying conditions (i.e., different printing modes, letter types, fonts) were collected to establish a dataset of 41 inkjet printer models from common manufacturers, such as HP, Canon, and Epson. Morphological features were analyzed by extraction of image features using several algorithms in a series of microscopic images and a Wilcoxon test was used to measure the significance of variations between printed samples. Significant differences between various printing conditions might post potential challenge to questioned document examination. Discriminant analysis and the k-nearest neighbor (KNN) algorithm were also employed for source printer prediction under varying printing condition on 30% images with the rest images as training dataset. The results of a validation experiment demonstrated that while quadratic discriminant analysis (QDA) achieved an accuracy of 96.3%, a combination of KNN and QDA reached 98.6%. As such, this technique could aid in the forensic examination of printed documents.

Abstract Image

基于微观图像特征的复杂打印条件下喷墨打印机预测
本文介绍了一种新技术,用于预测生成给定文档所使用的打印机型号。通过收集在不同条件(如不同打印模式、字母类型、字体)下打印的仅包含几个字母的样本,建立了一个包含惠普、佳能和爱普生等常见制造商的 41 种喷墨打印机型号的数据集。通过在一系列显微图像中使用多种算法提取图像特征来分析形态特征,并使用 Wilcoxon 检验来衡量打印样本之间差异的显著性。各种印刷条件之间的显著差异可能会给被质疑文件的检验带来潜在的挑战。此外,还采用了判别分析和 k-nearest neighbor(KNN)算法,在不同印刷条件下对 30% 的图像进行源打印机预测,其余图像作为训练数据集。验证实验结果表明,二次判别分析(QDA)的准确率为 96.3%,而 KNN 和 QDA 的组合准确率则达到了 98.6%。因此,这项技术有助于对印刷文件进行法证检验。
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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来源期刊
Science & Justice
Science & Justice 医学-病理学
CiteScore
4.20
自引率
15.80%
发文量
98
审稿时长
81 days
期刊介绍: Science & Justice provides a forum to promote communication and publication of original articles, reviews and correspondence on subjects that spark debates within the Forensic Science Community and the criminal justice sector. The journal provides a medium whereby all aspects of applying science to legal proceedings can be debated and progressed. Science & Justice is published six times a year, and will be of interest primarily to practising forensic scientists and their colleagues in related fields. It is chiefly concerned with the publication of formal scientific papers, in keeping with its international learned status, but will not accept any article describing experimentation on animals which does not meet strict ethical standards. Promote communication and informed debate within the Forensic Science Community and the criminal justice sector. To promote the publication of learned and original research findings from all areas of the forensic sciences and by so doing to advance the profession. To promote the publication of case based material by way of case reviews. To promote the publication of conference proceedings which are of interest to the forensic science community. To provide a medium whereby all aspects of applying science to legal proceedings can be debated and progressed. To appeal to all those with an interest in the forensic sciences.
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