The rapid advancement in deep learning makes the differentiation of authentic and manipulated facial images and video clips unprecedentedly harder. The underlying technology of manipulating facial appearances through deep generative approaches, enunciated as DeepFake that have emerged recently by promoting a vast number of malicious face manipulation applications. Subsequently, the need of other sort of techniques that can assess the integrity of digital visual content is indisputable to reduce the impact of the creations of DeepFake. A large body of research that are performed on DeepFake creation and detection create a scope of pushing each other beyond the current status. This study presents challenges, research trends, and directions related to DeepFake creation and detection techniques by reviewing the notable research in the DeepFake domain to facilitate the development of more robust approaches that could deal with the more advance DeepFake in the future.
翻译:深层学习的迅速发展使得真实的和被操纵的面部图像和视频剪辑的差别空前地大得多。通过深层的基因化方法(称为DeepFake,最近通过推广大量恶意的面部操纵应用而出现)来操纵面部外貌的基本技术,最近通过推广大量恶意的面部操纵应用而出现了这种技术。随后,其他能够评估数字视觉内容完整性的技术的需求是无可争议的,可以减少DhiepFake创作的影响。对深层假造和探测进行的大量研究创造了一个将彼此推向超越当前状况的范围。这项研究通过审查深层假造领域的显著研究,提出了与DepFake创造和探测技术有关的挑战、研究趋势和方向,以促进开发更强有力的方法,从而在未来应对更先进的深层假。