Deepfake technologies have been blurring the boundaries between the real and unreal, likely resulting in malicious events. By leveraging newly emerged deepfake technologies, deepfake researchers have been making a great upending to create deepfake artworks (deeparts), which are further closing the gap between reality and fantasy. To address potentially appeared ethics questions, this paper establishes a deepart detection database (DDDB) that consists of a set of high-quality conventional art images (conarts) and five sets of deepart images generated by five state-of-the-art deepfake models. This database enables us to explore once-for-all deepart detection and continual deepart detection. For the two new problems, we suggest four benchmark evaluations and four families of solutions on the constructed DDDB. The comprehensive study demonstrates the effectiveness of the proposed solutions on the established benchmark dataset, which is capable of paving a way to more interesting directions of deepart detection. The constructed benchmark dataset and the source code will be made publicly available.
翻译:深假技术模糊了真实和不真实之间的界限,可能导致恶意事件。通过利用新出现的深假技术,深假研究人员在创造深假艺术作品(深藏艺术作品)方面做出了巨大的努力,这些作品正在进一步缩小现实和幻想之间的差距。为了解决潜在的道德问题,本文件建立了一个深藏的探测数据库(DDDDB),其中包括一套高质量的传统艺术图像(Conarts)和五套由五种最先进的深假模型生成的深藏图像。这个数据库使我们能够探索一次全深藏技术探测和持续深海探测。关于这两个新问题,我们建议了四个基准评估和四个关于已建的DDDDB解决方案的系列。全面研究显示了在既定基准数据集上拟议解决方案的有效性,这些解决方案能够为更有趣的深藏探测方向铺平道路。构建的基准数据集和源代码将被公之于众。</s>