印刷工艺识别的高斯变差模型

M. U. Devi, A. Agarwal, C. R. Rao
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引用次数: 4

摘要

通过对法医科学家提出挑战,篡改文件是单调增长的。有一个非常需要开发替代解决方案的法医表征打印机。本文分析了各种打印机打印的文件,并对其进行了特征识别。目前的研究重点是建立一个模型高斯变差模型(GVM)来识别产生给定文件的打印技术。该方法是基于空间变异性的印刷技术特征。选取均匀颜色区域的图像作为样本进行GVM数据生成。生成的GVM数据被用作生成基于约简的决策树(RDT)的输入,该决策树给出了识别给定测试数据的源打印机的规则。对模型进行了性能分析。该方法有助于文件审查员查找打印机的基本打印模式,并有助于对不同的打印技术进行分类。
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Gaussian Variogram Model for Printing Technology Identification
Tampering of documents is monotonically growing by posing challenges to forensic scientists. There is a great need to develop alternative solutions for forensic characterization of printers. This paper analyzes documents printed by various printers and characterizes them for identification purposes. Present study focuses on developing a model Gaussian Variogram Model (GVM) for identifying the print technology which produced the given document. This method characterizes print technology based on spatial variability. Homogeneous color region of images are taken as samples for the GVM data generation. The generated GVM data is taken as input to generate Reduct based Decision Tree (RDT), which gives rules to identify the source printer for the given test data. Performance analysis of the model is also presented. Developed method assists the document examiner in finding basic print pattern of printers and it is also helpful in classifying different print technology.
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