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首页> 外文期刊>International journal of digital crime and forensics >On the Performance of Li's Unsupervised Image Classifier and the Optimal Cropping Position of Images for Forensic Investigations
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On the Performance of Li's Unsupervised Image Classifier and the Optimal Cropping Position of Images for Forensic Investigations

机译:李的无监督图像分类器的性能和法医调查图像的最佳裁剪位置

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摘要

Images from digital imaging devices are prevalent in society. The signatures of these images can be extracted as sensor pattern noise (SPN) and classified according to their source devices. In this paper, the authors assess the reliability of an unsupervised classifier for forensic investigation of digital images recovered from storage devices and to identify the best position for cropping the images before processing. Cross validation was performed on the classifier to assess the error rate and determine the effect of the size of the sample space and the classifier trainer on the performance of the classifier. Moreover, the authors find that the effect of saturation and subsequently the contamination of the SPN in the images affected performance negatively. To alleviate the negative performance, the authors identify the areas of images where less contamination occurs to perform cropping.
机译:来自数字成像设备的图像在社会中很普遍。这些图像的签名可以提取为传感器模式噪声(SPN),并根据其源设备进行分类。在本文中,作者评估了一种无监督分类器的可靠性,该分类器用于对从存储设备中恢复的数字图像进行取证调查,并确定在处理之前裁剪图像的最佳位置。在分类器上执行交叉验证,以评估错误率并确定样本空间大小和分类器训练器对分类器性能的影响。此外,作者发现图像中的饱和度以及随后SPN的污染会对性能产生负面影响。为了减轻负面影响,作者确定了图像区域中发生污染较少的区域以进​​行裁剪。

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