Deepfake is a deep learning-based technique that makes it easy to change or modify images and videos. In investigations and court, visual evidence is commonly employed, but these pieces of evidence may now be suspect due to technological advancements in deepfake. Deepfakes have been used to blackmail individuals, plan terrorist attacks, disseminate false information, defame individuals, and foment political turmoil. This study describes the history of deepfake, its development and detection, and the challenges based on physiological measurements such as eyebrow recognition, eye blinking detection, eye movement detection, ear and mouth detection, and heartbeat detection. The study also proposes a scope in this field and compares the different biological features and their classifiers. Deepfakes are created using the generative adversarial network (GANs) model, and were once easy to detect by humans due to visible artifacts. However, as technology has advanced, deepfakes have become highly indistinguishable from natural images, making it important to review detection methods.
翻译:深假是一种深层次的学习技术,它使改变或修改图像和视频变得容易。在调查和法庭中,视觉证据被普遍使用,但由于深假的技术进步,这些证据现在可能令人怀疑。深假被用来勒索个人、策划恐怖袭击、传播虚假信息、诽谤个人和煽动政治动乱。这项研究描述了深假的历史、其发展和探测,以及基于生理测量的挑战,如眉毛识别、眨眼探测、眼动检测、耳和口腔检测以及心跳检测。研究还提出了这一领域的范围,并比较了不同的生物特征及其分类。深假是利用基因对抗网络(GANs)模型创建的,并且由于可见的手工艺品,人类曾经很容易发现。然而,随着技术的发展,深假象已经变得与自然图像高度分辨不开,因此有必要审查探测方法。