There have been emerging a number of benchmarks and techniques for the detection of deepfakes. However, very few works study the detection of incrementally appearing deepfakes in the real-world scenarios. To simulate the wild scenes, this paper suggests a continual deepfake detection benchmark (CDDB) over a new collection of deepfakes from both known and unknown generative models. The suggested CDDB designs multiple evaluations on the detection over easy, hard, and long sequence of deepfake tasks, with a set of appropriate measures. In addition, we exploit multiple approaches to adapt multiclass incremental learning methods, commonly used in the continual visual recognition, to the continual deepfake detection problem. We evaluate several methods, including the adapted ones, on the proposed CDDB. Within the proposed benchmark, we explore some commonly known essentials of standard continual learning. Our study provides new insights on these essentials in the context of continual deepfake detection. The suggested CDDB is clearly more challenging than the existing benchmarks, which thus offers a suitable evaluation avenue to the future research. Our benchmark dataset and the source code will be made publicly available.
翻译:已经出现了一些发现深海假象的基准和技术,然而,研究发现在现实世界情景中逐渐显现的深海假象的工作很少。为模拟野外景,本文件建议对从已知和未知的基因化模型中收集的深海假象进行连续的深海假象基准(CDDB)。建议的CDDB设计了多项关于探测简单、硬和长序列的深假任务的评价,并制定了一套适当的措施。此外,我们利用多种方法,使在持续视觉识别中常用的多级渐进学习方法适应持续深假探测问题。我们评估了拟议的CDDB中的若干方法,包括经修改的方法。在拟议的基准范围内,我们探索了标准持续不断学习的一些常见的基本知识。我们的研究为这些基本知识提供了新的洞察力。建议的CDDB显然比现有的基准更具挑战性,因此为今后的研究提供了适当的评估途径。我们的基准数据集和源代码将公开提供。