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Toward Reliable Models For Authenticating Multimedia Content: Detecting Resampling Artifacts With Bayesian Neural Networks

机译:迈向认证多媒体内容的可靠模型:使用贝叶斯神经网络检测重采样伪像

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In multimedia forensics, learning-based methods provide state-of the-art performance in determining origin and authenticity of images and videos. However, most existing methods are challenged by out-of-distribution data, i.e., with characteristics that are not covered in the training set. This makes it difficult to know when to trust a model, particularly for practitioners with limited technical background.In this work, we make a first step toward redesigning forensic algorithms with a strong focus on reliability. To this end, we propose to use Bayesian neural networks (BNN), which combine the power of deep neural networks with the rigorous probabilistic formulation of a Bayesian framework. Instead of providing a point estimate like standard neural networks, BNNs provide distributions that express both the estimate and also an uncertainty range.We demonstrate the usefulness of this framework on a classical forensic task: resampling detection. The BNN yields state-of-the-art detection performance, plus excellent capabilities for detecting out-of-distribution samples. This is demonstrated for three pathologic issues in resampling detection, namely unseen resampling factors, unseen JPEG compression, and unseen resampling algorithms. We hope that this proposal spurs further research toward reliability in multimedia forensics.
机译:在多媒体取证中,基于学习的方法可在确定图像和视频的来源和真实性方面提供最先进的性能。但是,大多数现有方法都受到分布外数据的挑战,即具有训练集中未涵盖的特征。这使得很难知道何时信任模型,特别是对于技术背景有限的从业人员而言。在这项工作中,我们迈出了重新设计法医算法的第一步,重点是可靠性。为此,我们建议使用贝叶斯神经网络(BNN),该技术将深度神经网络的功能与贝叶斯框架的严格概率公式结合在一起。 BNN不会提供像标准神经网络那样的点估计,而是提供表示估计和不确定范围的分布。我们证明了此框架在经典法证任务(重采样检测)中的有用性。 BNN具有最先进的检测性能,并具有出色的检测分布失检样本的功能。对于重采样检测中的三个病理问题证明了这一点,即看不见的重采样因子,看不到的JPEG压缩和看不见的重采样算法。我们希望这项提议能激发人们进一步研究多媒体取证的可靠性。

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