Deepfake is content or material that is synthetically generated or manipulated using artificial intelligence (AI) methods, to be passed off as real and can include audio, video, image, and text synthesis. This survey has been conducted with a different perspective compared to existing survey papers, that mostly focus on just video and image deepfakes. This survey not only evaluates generation and detection methods in the different deepfake categories, but mainly focuses on audio deepfakes that are overlooked in most of the existing surveys. This paper critically analyzes and provides a unique source of audio deepfake research, mostly ranging from 2016 to 2020. To the best of our knowledge, this is the first survey focusing on audio deepfakes in English. This survey provides readers with a summary of 1) different deepfake categories 2) how they could be created and detected 3) the most recent trends in this domain and shortcomings in detection methods 4) audio deepfakes, how they are created and detected in more detail which is the main focus of this paper. We found that Generative Adversarial Networks(GAN), Convolutional Neural Networks (CNN), and Deep Neural Networks (DNN) are common ways of creating and detecting deepfakes. In our evaluation of over 140 methods we found that the majority of the focus is on video deepfakes and in particular in the generation of video deepfakes. We found that for text deepfakes there are more generation methods but very few robust methods for detection, including fake news detection, which has become a controversial area of research because of the potential of heavy overlaps with human generation of fake content. This paper is an abbreviated version of the full survey and reveals a clear need to research audio deepfakes and particularly detection of audio deepfakes.
翻译:深假是使用人工智能(AI)方法合成生成或操纵的内容或材料, 真实地传递, 包括音频、 视频、 图像和文本合成。 与现有的调查论文相比, 本次调查是以不同视角进行的, 大多侧重于视频和图像深假。 此调查不仅评估不同深假类别的生成和检测方法, 并且主要侧重于大多数现有调查忽视的音频深假涂层。 本文批判性地分析并提供了音频深假研究的独特来源, 大多从2016年到2020年。 据我们所知, 这是第一次以英语的音频深假合成为焦点的调查。 此调查为读者提供了1) 不同深假假的类别 。 如何创建和检测方法 3 该领域的最新趋势以及检测方法 4 深假假的创建和检测方法