Suppr超能文献

一种基于深度学习和错误级别分析的用于揭露面部交换图像的新型伪造特征提取技术。

A Novel Counterfeit Feature Extraction Technique for Exposing Face-Swap Images Based on Deep Learning and Error Level Analysis.

作者信息

Zhang Weiguo, Zhao Chenggang, Li Yuxing

机构信息

College of Computer Science and Technology, Xi'an University of Science and Technology, Xi'an 710054, China.

School of Automation and Information Engineering, Xi'an University of Technology, Xi'an 710048, China.

出版信息

Entropy (Basel). 2020 Feb 21;22(2):249. doi: 10.3390/e22020249.

Abstract

The quality and efficiency of generating face-swap images have been markedly strengthened by deep learning. For instance, the face-swap manipulations by DeepFake are so real that it is tricky to distinguish authenticity through automatic or manual detection. To augment the efficiency of distinguishing face-swap images generated by DeepFake from real facial ones, a novel counterfeit feature extraction technique was developed based on deep learning and error level analysis (ELA). It is related to entropy and information theory such as cross-entropy loss function in the final softmax layer. The DeepFake algorithm is only able to generate limited resolutions. Therefore, this algorithm results in two different image compression ratios between the fake face area as the foreground and the original area as the background, which would leave distinctive counterfeit traces. Through the ELA method, we can detect whether there are different image compression ratios. Convolution neural network (CNN), one of the representative technologies of deep learning, can extract the counterfeit feature and detect whether images are fake. Experiments show that the training efficiency of the CNN model can be significantly improved by the ELA method. In addition, the proposed technique can accurately extract the counterfeit feature, and therefore achieves outperformance in simplicity and efficiency compared with direct detection methods. Specifically, without loss of accuracy, the amount of computation can be significantly reduced (where the required floating-point computing power is reduced by more than 90%).

摘要

深度学习显著提高了生成换脸图像的质量和效率。例如,DeepFake进行的换脸操作非常逼真,通过自动或手动检测来辨别真伪很棘手。为了提高区分由DeepFake生成的换脸图像和真实面部图像的效率,基于深度学习和错误级别分析(ELA)开发了一种新颖的伪造特征提取技术。它与熵和信息理论相关,比如最终softmax层中的交叉熵损失函数。DeepFake算法只能生成有限的分辨率。因此,该算法会导致作为前景的假脸区域和作为背景的原始区域之间存在两种不同的图像压缩率,这会留下明显的伪造痕迹。通过ELA方法,我们可以检测是否存在不同的图像压缩率。卷积神经网络(CNN)作为深度学习的代表性技术之一,可以提取伪造特征并检测图像是否为假。实验表明,ELA方法可以显著提高CNN模型的训练效率。此外,所提出的技术可以准确提取伪造特征,因此与直接检测方法相比,在简单性和效率方面表现出色。具体而言,在不损失准确性的情况下,可以显著减少计算量(所需的浮点计算能力减少90%以上)。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a666/7516681/82f7f0bffd7b/entropy-22-00249-g001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验