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Source camera identification for re-compressed images: A model perspective based on tri-transfer learning

机译:用于重新压缩图像的源相机识别:基于Tri转移学习的模型透视图

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摘要

Source Camera Identification (SCI) achieves high accuracy on matching identification, in which the training and testing sample sets are derived from the same statistical distribution. However, in practice the training and testing sets, namely, the source and test domains, may consist of digital images that are double compressed by various software and applications with different quantization tables. Unfortunately, existing methods are inadequate in performance under such circumstances, such that we aim to find an algorithm that can fill the gap between the training and testing sets. In this work, we propose an algorithm, tri-transfer Learning (TTL), which is a cross-pollination of transfer learning and tri-training. For TTL, the transfer learning module transfers the knowledge learned from the training sets to improve the identification performance on testing. Compared with other methods, TTL uses a semi-supervised approach requiring only a small number of training samples and has better performance than other methods. The tri-training module, which is a variation of the co-training, facilitates knowledge transferring by assigning pseudo-labels to unlabelled instances and adds target instances with labels to the training set in batches. Combining the two modules, our framework can gain higher efficiency and performance than other state-of-art methods on mismatched camera model identification which is supported by experiments based on the open-source Dresden Image Database.
机译:源相机识别(SCI)实现了匹配识别的高精度,其中培训和测试采样集源自相同的统计分布。但是,在实践中,培训和测试集,即源和测试域,可以由各种软件和具有不同量化表的应用程序的数字图像组成的数字图像。遗憾的是,在这种情况下,现有方法在性能不足,使得我们的目标是找到一种可以填补培训和测试集之间的差距的算法。在这项工作中,我们提出了一种算法,三转移学习(TTL),这是转移学习和三训练的交叉授粉。对于TTL,转移学习模块将从培训集中学习的知识传输,以提高测试的识别性能。与其他方法相比,TTL采用半监督方法只需要少量训练样本,并且具有比其他方法更好的性能。作为共同训练的变体的三训练模块促进了通过将伪标签分配给未标记的实例并将具有标签的目标实例添加到批量中设置的目标实例。组合这两个模块,我们的框架可以获得比其他最先进的方法获得更高的效率和性能,这些方法在不匹配的相机模型标识上由基于开源DRESDON图像数据库的实验支持的实验支持。

著录项

  • 来源
    《Computers & Security》 |2021年第1期|102076.1-102076.13|共13页
  • 作者单位

    School of Information and Communication Engineering Dalian University of echnology P.R. China;

    School of Information and Communication Engineering Dalian University of echnology P.R. China;

    Department of Electrical Engineering The State University of New York at Buffalo Buffalo NY 14260-2500 USA;

    School of Information and Communication Engineering Dalian University of echnology P.R. China;

    School of Information and Communication Engineering Dalian University of echnology P.R. China;

    Liaoning Normal University Dalian Liaoning 116029 P.R. China;

    Beijing Institute of Electronics Technology and Application Beijing 100091 P.R. China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Source camera identification (SCI); Tri-transfer learning; Prototype construction; Double JPEG compression; Co-training;

    机译:源相机识别(SCI);三转学习;原型结构;双jpeg压缩;共同培训;
  • 入库时间 2022-08-18 22:55:44

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