TMFNet: Two-Stream Multi-Channels Fusion Networks for Color Image Operation Chain Detection

Yakun Niu, Lei Tan, Lei Zhang, Xianyu Zuo
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Abstract

Image operation chain detection techniques have gained increasing attention recently in the field of multimedia forensics. However, existing detection methods suffer from the generalization problem. Moreover, the channel correlation of color images that provides additional forensic evidence is often ignored. To solve these issues, in this article, we propose a novel two-stream multi-channels fusion networks for color image operation chain detection in which the spatial artifact stream and the noise residual stream are explored in a complementary manner. Specifically, we first propose a novel deep residual architecture without pooling in the spatial artifact stream for learning the global features representation of multi-channel correlation. Then, a set of filters is designed to aggregate the correlation information of multi-channels while capturing the low-level features in the noise residual stream. Subsequently, the high-level features are extracted by the deep residual model. Finally, features from the two streams are fed into a fusion module, to effectively learn richer discriminative representations of the operation chain. Extensive experiments show that the proposed method achieves state-of-the-art generalization ability while maintaining robustness to JPEG compression. The source code used in these experiments will be released at https://github.com/LeiTan-98/TMFNet.
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TMFNet:用于彩色图像操作链检测的双流多通道融合网络
在多媒体取证领域,图像操作链检测技术日益受到关注。然而,现有的检测方法存在泛化问题。此外,提供额外取证证据的彩色图像通道相关性往往被忽略。为了解决这些问题,我们在本文中提出了一种用于彩色图像操作链检测的新型双流多通道融合网络,该网络以互补的方式探索空间伪影流和噪声残留流。具体来说,我们首先提出了一种新颖的深度残差架构,该架构不对空间伪影流进行池化处理,用于学习多通道相关性的全局特征表示。然后,我们设计了一组滤波器来聚合多通道的相关信息,同时捕捉噪声残差流中的低级特征。最后,通过深度残差模型提取高级特征。这些实验所使用的源代码将在https://github.com/LeiTan-98/TMFNet。
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