一种基于密集动态CNN的DeepFake压缩视频检测方法

Xiuqing Mao, Lei Sun, Hongmeng Zhang, Shuai Zhang
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引用次数: 0

摘要

DeepFake的出现给数据隐私和社会稳定带来了严重风险。针对DeepFake视频检测在复杂压缩格式和不同伪造方法的数据集上表现不佳的问题,提出了一种基于密集动态卷积神经网络(CNN)的端到端DeepFake视频检测方法。该方法通过余弦相似度对提取的人脸图像进行聚类和清理,并通过数据增强对人脸图像进行扩展,提高数据的多样性。在CNN中加入动态密集块,解决了深度神经网络的优化难题,并引入了注意机制,进一步提高了泛化能力。卷积核剪枝通过有效减少动态卷积带来的计算量,提高了处理速度。实验表明,与其他网络模型相比,该方法在跨压缩率和数据集的DeepFake视频检测方面具有更好的效果。
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A DeepFake compressed video detection method based on dense dynamic CNN
The emergence of DeepFake poses serious risks to data privacy and social stability. We propose an end-to-end DeepFake video detection method based on a dense dynamic convolutional neural network (CNN) to address the poor performance of DeepFake video detection on complex compression formats and datasets of different forgery methods. In this method, extracted face images are clustered and cleaned by cosine similarity, and face images are expanded through data augmentation to improve data diversity. Dynamic dense blocks are incorporated in a CNN to address optimization difficulties in deep neural networks, and an attention mechanism further improves generalization power. Convolution kernel pruning increases processing speed by effectively reducing the computational needs due to dynamic convolution. Experiments demonstrate that this method has better results on DeepFake video detection across compression rates and datasets compared to other network models.
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