深度学习的深度伪造检测:卷积神经网络与变形金刚

V. Thing
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引用次数: 1

摘要

——深度造假技术迅猛发展,严重威胁媒体信息可信度。影响目标个人和机构的后果可能是可怕的。在这项工作中,我们研究了深度学习架构的演变,特别是cnn和变形金刚。我们确定了8个有前途的深度学习架构,设计和开发了我们的深度伪造检测模型,并在成熟的深度伪造数据集上进行了实验。这些数据集包括最新的第二代和第三代deepfake数据集。我们评估了我们开发的单模型检测器在深度伪造检测和交叉数据集评估中的有效性。在FF++ 2020、Google DFD、Celeb-DF、Deeper Forensics和DFDC deepfakes检测中,准确率分别达到88.74%、99.53%、97.68%、99.73%和92.02%,AUC分别达到99.95%、100%、99.88%、99.99%和97.61%。我们还确定并展示了cnn和Transformers模型的独特优势,并分析了不同deepfake数据集之间观察到的关系,以帮助该领域的未来发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deepfake Detection with Deep Learning: Convolutional Neural Networks versus Transformers
- The rapid evolvement of deepfake creation technologies is seriously threating media information trustworthiness. The consequences impacting targeted individuals and institutions can be dire. In this work, we study the evolutions of deep learning architectures, particularly CNNs and Transformers. We identified eight promising deep learning architectures, designed and developed our deepfake detection models and conducted experiments over well-established deepfake datasets. These datasets included the latest second and third generation deepfake datasets. We evaluated the effectiveness of our developed single model detectors in deepfake detection and cross datasets evaluations. We achieved 88.74%, 99.53%, 97.68%, 99.73% and 92.02% accuracy and 99.95%, 100%, 99.88%, 99.99% and 97.61 % AUC, in the detection of FF++ 2020, Google DFD, Celeb-DF, Deeper Forensics and DFDC deepfakes, respectively. We also identified and showed the unique strengths of CNNs and Transformers models and analysed the observed relationships among the different deepfake datasets, to aid future developments in this area.
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