Recent rapid advancements in deepfake technology have allowed the creation of highly realistic fake media, such as video, image, and audio. These materials pose significant challenges to human authentication, such as impersonation, misinformation, or even a threat to national security. To keep pace with these rapid advancements, several deepfake detection algorithms have been proposed, leading to an ongoing arms race between deepfake creators and deepfake detectors. Nevertheless, these detectors are often unreliable and frequently fail to detect deepfakes. This study highlights the challenges they face in detecting deepfakes, including (1) the pre-processing pipeline of artifacts and (2) the fact that generators of new, unseen deepfake samples have not been considered when building the defense models. Our work sheds light on the need for further research and development in this field to create more robust and reliable detectors.
翻译:最近深假技术的迅速发展使得能够创建高度现实的假媒体,如录象、图像和音频等。这些材料对人类认证构成重大挑战,如假冒、错误信息,甚至对国家安全构成威胁。为了跟上这些快速进展的步伐,提出了几项深假检测算法,导致深假创造者和深假探测器之间持续的军备竞赛。然而,这些探测器往往不可靠,常常无法探测深假。本研究报告强调了它们在发现深假时所面临的挑战,包括:(1) 工艺品的预加工管道;(2) 在建立防御模型时,没有考虑新的、看不见的深假样品的生成。我们的工作揭示了在这一领域进行进一步研究和开发以创造更可靠和可靠的探测器的必要性。</s>