视频深度造假的轮询机制

Jian-Jiun Ding, Hsuan-Wei Hsu, Chien-Wei Huang
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引用次数: 1

摘要

开发了一种基于轮询的机制来识别视频是否伪造。它对法医图像处理具有重要意义。然而,大多数现有的视频深度造假算法都是基于帧的。换句话说,首先使用基于学习的方法来识别一帧是否伪造,然后使用所有帧的伪造分数的平均值来确定整个视频是否伪造。在这项工作中,我们提出了一种轮询机制来很好地整合每帧的深度得分。我们发现深度假算法的误识别通常发生在动作剧烈、头部倾斜、眼睛眨眼的画面中。因此,我们根据帧差、头部方向、眼睛是否眨眼以及验证数据的准确率来确定每一帧的权重。利用所提出的轮询机制,可以提高视频深度伪造的准确性,并且可以使用更少的帧数来确定视频是否伪造。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Polling Mechanism for Video Deepfake
A polling-based mechanism is developed to identify whether a video is forged. It is important for forensic image processing. However, most of the existing video deepfake algorithms are frame-based. In other words, a learning-based method is applied to identify whether a frame is forged then the mean of the fake score for all frames is applied to determine whether the whole video is forged. In this work, we propose a polling mechanism to well integrate the deepfake score of each frame. We found that the misidentification of a deepfake algorithm usually occurs in the frame with drastic motion, a tilted head, and blinking eyes. Therefore, we determine the weights of each frame according to the frame difference, the head orientation, whether the eyes are blinking, and the accuracy rate of the validation data. With the proposed polling mechanism, the accuracy of video deepfake can be improved and whether a video is forged can be well determined using a much smaller number of frames.
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