Machine Learning-Based Methods in Source Camera Identification: A Systematic Review

O. Gouda, A. Bouridane, M. A. Talib, Q. Nasir
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Abstract

Source identification is one of the most critical problems in the field of multimedia forensics. In the last decade, researchers have been studying and improving in this field. Photo Response Non-Uniformity is one of the unique noise patterns that is being used to match a media to its originating device. Utilizing the noise patterns with machine learning algorithms has been the focus of research in recent years. Therefore, a systematic review is needed to present the latest contributions in this field. This systematic review focuses on the published work from 2015 to 2021 in source identification using noise patterns in machine learning-based systems. The results of the review indicate that a benchmark should be proposed and used to fairly compare past and future methods. Moreover, a minimum number of devices used for evaluating a model should be set by the research community in order to accurately evaluate the accuracy of the model in real-life situations.
基于机器学习的源相机识别方法:系统综述
源识别是多媒体取证领域的关键问题之一。在过去的十年里,研究人员一直在研究和改进这一领域。光响应非均匀性是一种独特的噪声模式,用于将媒体与其原始设备相匹配。利用噪声模式与机器学习算法是近年来研究的热点。因此,有必要对这一领域的最新成果进行系统的综述。本系统综述的重点是2015年至2021年在基于机器学习的系统中使用噪声模式的源识别方面发表的工作。结果表明,应该提出一个基准,并使用它来公平地比较过去和未来的方法。此外,为了准确地评估模型在现实生活中的准确性,研究界应该设定用于评估模型的最小设备数量。
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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