Abdelrahman Mahmoud Saber, Mohamed Tallat Hassan, Moataz Soliman Mohamed, Rahma ELHusseiny, Yasser Muhammed Eltaher, Mohammed AbdelRazek, Yasser Moustafa Kamal Omar
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引用次数: 7
摘要
最近,深度假换脸技术被广泛使用,这使得制作商业假视频变得容易。由于视频可能对世界产生潜在的破坏性影响,确定视频的合法性变得越来越重要。我们使用了多种技术,并在它们之间进行比较以检测假视频。本文采用了YOLO-CRNN、LSTM等不同的技术,并对它们的一些技术进行了比较,利用EfficientNet-B5将这些人脸作为一批输入序列提取到双向长短期记忆(BiLSTM)中,提取时间特征。然后在一个巨大的新数据集上对该方案进行测试;celebdffacefrenciics ++ (c23),基于两个著名记录的混合;faceforrencies ++ (c23)和CelebDF。实现AUROC曲线下面积(Area Under Receiver Operating Characteristic, AUROC)结果89.35%,准确度89.38,回收率83.13%,准确度85.54%,F1-measure插入数据焦点84.23。
Recently, deepfake face-swapping techniques are widely used, which allow to easily create buinesslike fake videos. Determining the rightfulness of a video is becoming increasingly important due to the potential distructive impact it can have on the world. we used more than technique and compared between them to detect fake videos. we applied different techniques like YOLO-CRNN, LSTM and in this paper, we compared between them in some techniques EfficientNet-B5 is used to pluck out the spatial options of those faces they are fed as a batch of input series into a two-way long- and short-term memory (BiLSTM) to extract temporal characteristics. The scheme is then tested on a a huge new dataset in; CelebDFFaceForencics++ (c23), based on a mash-up of two well-known records; FaceForencies++ (c23) and CelebDF. Achieved Area Under Receiver Operating Characteristic (AUROC) curve 89.35% result, 89.38 accuracy, 83.13% recovery, 85.54% accuracy and 84.23 F1-measure to insert data focus.