DEEPFAKE DETECTION USING TRANSFER LEARNING-BASED XCEPTION MODEL

Velusamy Rajakumareswaran, Surendran Raguvaran, Venkatachalam Chandrasekar, Sugavanam Rajkumar, Vijayakumar Arun
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Abstract

Justification of the purpose of the research. In recent times, several approaches for face manipulation in videos have been extensively applied and availed to the public which makes editing faces in video easy for everyone effortlessly with realistic efforts.  While beneficial in various domains, these methods could significantly harm society if employed to spread misinformation. So, it is also vital to properly detect whether a face has been distorted in a video series. To detect this deepfake, convolutional neural networks can be used in past works. However, it needs a greater number of parameters and more computations. So, to overcome these limitations and to accurately detect deepfakes in videos, a transfer learning-based model named the Improved Xception model is suggested. Obtained results. This model is trained using extracted facial landmark features with robust training. Moreover, the improved Xception model's detection accuracy is evaluated alongside ResNet and Inception, considering model loss, accuracy, ROC, training time, and the Precision-Recall curve. The outcomes confirm the success of the proposed model, which employs transfer learning techniques to identify fraudulent videos. Furthermore, the method demonstrates a noteworthy 5% increase in efficiency compared to current systems.
使用基于迁移学习的 Xception 模型进行深度伪造检测
研究目的的合理性。近来,在视频中处理人脸的几种方法已被广泛应用并提供给公众,这使得每个人都能毫不费力地编辑视频中的人脸,而且只需付出实际的努力。 虽然这些方法在不同领域都有益处,但如果被用于传播错误信息,则可能对社会造成严重危害。因此,正确检测视频系列中的人脸是否被篡改也至关重要。为了检测这种深度伪造,在过去的工作中可以使用卷积神经网络。然而,它需要更多的参数和更多的计算。因此,为了克服这些局限性并准确检测视频中的深度伪造,我们提出了一种基于迁移学习的模型,名为 "改进的 Xception 模型"。结果该模型使用提取的面部地标特征进行鲁棒训练。此外,考虑到模型损失、准确性、ROC、训练时间和精度-召回曲线,对改进 Xception 模型的检测准确性与 ResNet 和 Inception 进行了评估。结果证实了所提出模型的成功,该模型采用了迁移学习技术来识别欺诈视频。此外,与现有系统相比,该方法的效率显著提高了 5%。
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