基于表情动态的视频取证

Duc-Tien Dang-Nguyen, V. Conotter, G. Boato, F. D. Natale
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引用次数: 4

摘要

如今,数字图形工具能够呈现高度逼真的图像,这些图像很容易迷惑我们对现实的感知。这带来了严重的道德和法律问题,这反过来又产生了对进一步技术的需求,这些技术能够确保数字媒体作为现实的真实代表的可信度,特别是在描绘人类时。在这项工作中,我们提出了一种新的法医技术来解决在视频中区分计算机生成(CG)和真人的问题。它通过分析CG和真人面部表情的时空外观,利用视频序列固有的时间信息。即使面部表情的渲染已经达到了出色的表现,随着时间的推移,CG面部外观仍然呈现出一些与真人自然肌肉运动大不相同的潜在力学特性。我们在一组描述微笑时面部动态和时空变化的特征上建立了一个有效的分类器,以区分CG和人脸。实验结果证明了该方法的有效性。
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Video forensics based on expression dynamics
Digital graphics tools are nowadays capable of rendering highly photorealistic imagery, which easily puzzle our perception of reality. This poses serious ethical and legal issues, which in turn create the need for further technologies able to ensure the trustworthiness of digital media as a true representation of reality, especially when depicting humans. In this work, we propose a novel forensic technique to tackle the problem of distinguishing computer generated (CG) from real humans in videos. It exploits the temporal information inherent of a video sequence by analyzing the spatio-temporal appearance of facial expressions in both CG and real humans. Even if rendering facial expression has reached outstanding performances, CG face appearance over time still presents some underlying mechanical properties that greatly differ from the natural muscle movements of real humans. We build an efficient classifier on a set of features describing facial dynamics and spatio-temporal changes during smiling to distinguish CG from human faces. Experimental results demonstrate the effectiveness of the proposed approach.
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