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A Jungle Computing approach to common image source identification in large collections of images

机译:大量图像中常见图像源识别的丛林计算方法

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Analyzing digital images is an important investigation in forensics with the ever increasing number of images from computers and smartphones. In this article we aim to advance the state-of-the-art in common image source identification (which images originate from the same source camera). To this end, we present two types of applications for different goals that make use of a) a modern Desktop computer with a GPU and b) highly heterogeneous cluster computers with many different kinds of GPUs, something we call computing jungles. The first application targets medium-scale investigations, for example within a crime laboratory, the second application is targeted at large-scale investigations, for example within institutions. We advance the state-of-the-art by 1) explaining in detail how we obtain the performance to 2) support large databases of images in reasonable time while 3) not giving up accuracy. Moreover, we do not apply filtering ensuring that 4) our results are highly reproducible. (C) 2018 The Authors. Published by Elsevier Ltd.
机译:随着计算机和智能手机中图像数量的不断增长,分析数字图像是取证领域的一项重要研究。在本文中,我们旨在提高通用图像源识别(来自同一源摄像机的图像)的最新技术。为此,我们提出了两种针对不同目标的应用程序,这些应用程序使用:a)具有GPU的现代台式计算机和b)具有许多不同GPU的高度异构的群集计算机,我们称之为计算丛林。第一个应用程序针对中型调查,例如在犯罪实验室内,第二个应用程序针对大型调查,例如在机构内。我们通过1)详细说明如何获得性能来提高技术水平,以便2)在合理的时间内支持大型图像数据库,而3)不放弃准确性。此外,我们不会应用过滤来确保4)我们的结果具有高度可重复性。 (C)2018作者。由Elsevier Ltd.发布

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