The widespread diffusion of synthetically generated content is a serious threat that needs urgent countermeasures. The generation of synthetic content is not restricted to multimedia data like videos, photographs, or audio sequences, but covers a significantly vast area that can include biological images as well, such as western-blot and microscopic images. In this paper, we focus on the detection of synthetically generated western-blot images. Western-blot images are largely explored in the biomedical literature and it has been already shown how these images can be easily counterfeited with few hope to spot manipulations by visual inspection or by standard forensics detectors. To overcome the absence of a publicly available dataset, we create a new dataset comprising more than 14K original western-blot images and 18K synthetic western-blot images, generated by three different state-of-the-art generation methods. Then, we investigate different strategies to detect synthetic western blots, exploring binary classification methods as well as one-class detectors. In both scenarios, we never exploit synthetic western-blot images at training stage. The achieved results show that synthetically generated western-blot images can be spot with good accuracy, even though the exploited detectors are not optimized over synthetic versions of these scientific images.
翻译:合成成像内容的广泛传播是一个需要紧急对策的严重威胁。合成成像内容的生成并不局限于视频、照片或音频序列等多媒体数据,而是覆盖一个巨大的领域,其中也包括生物图象,例如西块和微粒图象。在本文中,我们的重点是探测合成成像制作的西块图象。西块图象主要在生物医学文献中进行探索,并且已经表明这些图象如何很容易被伪造,很少希望通过视觉检查或标准的法医探测器来发现操纵。为了克服缺少公开的数据集的问题,我们创建了一套新数据集,其中包括超过14K原始西块图象和18K合成西块图象,由三种最先进的生成方法生成。然后,我们研究不同的战略来探测合成西方的色幅,探索二元分类方法以及一等探测器。在这两种情况下,我们从未在培训阶段利用合成成像的西块图象。我们取得的成果表明,合成成像成像成像的西块图象可以以精准度作为地点,尽管这些探测器是合成的精度。