Design of Software Architecture for Neural Network Cooperation: Case of Forgery Detection

Akira Mizutani, Masami Noro, Atsushi Sawada
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Abstract

Recent technological advances in media tampering has been the cause of many harmful forged images. Tampering detection methods became major research topics to cope with it in the neural network community. The methods almost always aim at detecting a specific forgery. That is, a general detecting method to find any tampering has not been invented so far. This paper concerns about a software architecture for organizing multiple neural networks to detect multiple kinds of forgeries. The key issue here is to construct, from the meta-level, a mechanism for an ensemble of front-end neural networks to select a neural network which makes a decision. Under this architecture, we implemented a prototype for detecting forged images resulted from multiple tampering methods of copy-move and compression. In order to demonstrate that our architecture works well, we examined a case study with a total of 120,000 patches which consist of three classes of copy-move, compression and untampered data, 40,000 patches for each. The result shows our proposed method successfully classified 108,954 out of 120,000 patches with 90.82 % accuracy. We also give discussions on our architectural implication to avoid concept drift. Our architecture is designed to be a context-oriented and meta-level, which has a two-layered structure: meta and base. The neural networks can be categorized into base-level components, whereas a component coordinating the networks is addressed in meta-level. The architecture explains that the concept drift can be handled in the meta-level. Through the discussions on the techniques of transfer learning, online learning, and ensemble learning in terms of the architecture we constructed, it is concluded that we could construct a universal architecture to coordinate machine learning components.
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神经网络协同软件体系结构设计:以伪造检测为例
最近在媒体篡改技术的进步已经造成了许多有害的伪造图像。针对这种情况,篡改检测方法成为神经网络学界的主要研究课题。这些方法几乎总是旨在检测特定的伪造品。也就是说,迄今为止还没有发明一种通用的检测方法来发现任何篡改。本文研究了一种组织多个神经网络来检测多种伪造文件的软件体系结构。这里的关键问题是从元层面构建一种机制,使前端神经网络集合选择一个做出决策的神经网络。在此架构下,我们实现了一个检测复制-移动和压缩等多种篡改方法导致的伪造图像的原型。为了证明我们的架构工作得很好,我们检查了一个案例研究,总共有120,000个补丁,其中包括三种类型的复制移动,压缩和未篡改数据,每种类型有40,000个补丁。结果表明,该方法在12万个补丁中成功分类了108,954个,准确率为90.82%。我们还讨论了我们的架构含义,以避免概念漂移。我们的体系结构被设计成面向上下文和元级的,它具有两层结构:元和基。神经网络可分为基础级组件,而协调网络的组件则在元级中寻址。该体系结构解释了概念漂移可以在元级别处理。通过对迁移学习、在线学习和集成学习技术在我们构建的体系结构方面的讨论,得出我们可以构建一个通用的体系结构来协调机器学习组件。
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