The amount of multimedia content shared everyday, combined with the level of realism reached by recent fake-generating technologies, threatens to impair the trustworthiness of online information sources. The process of uploading and sharing data tends to hinder standard media forensic analyses, since multiple re-sharing steps progressively hide the traces of past manipulations. At the same time though, new traces are introduced by the platforms themselves, enabling the reconstruction of the sharing history of digital objects, with possible applications in information flow monitoring and source identification. In this work, we propose a supervised framework for the reconstruction of image sharing chains on social media platforms. The system is structured as a cascade of backtracking blocks, each of them tracing back one step of the sharing chain at a time. Blocks are designed as ensembles of classifiers trained to analyse the input image independently from one another by leveraging different feature representations that describe both content and container of the media object. Individual decisions are then properly combined by a late fusion strategy. Results highlight the advantages of employing multiple clues, which allow accurately tracing back up to three steps along the sharing chain.
翻译:每天分享的多媒体内容的数量,加上最近虚假生成技术所达到的现实主义水平,有可能损害在线信息来源的可信度。数据上传和共享过程往往阻碍标准的媒体法证分析,因为多重重新共享步骤逐渐掩盖了以往操纵的痕迹。与此同时,平台本身也引入了新的痕迹,从而重建了数字物体的共享历史,并有可能在信息流动监测和来源识别中应用。在这项工作中,我们提议了重建社交媒体平台上图像共享链的监管框架。系统的结构是一系列后跟踪块,每个系统一次追溯到共享链的一步。区被设计成一组受过训练的分类人员,通过利用描述媒体对象的内容和容器的不同特征表现,独立分析输入图像。个人决定随后通过迟发的聚合战略进行适当组合。结果突出了使用多个线索的好处,从而可以准确追溯到共享链上的三个步骤。