使用深度学习检测深度伪造

J. Dheeraj, Krutant Nandakumar, A. Aditya, B. S. Chethan, G. Kartheek
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引用次数: 3

摘要

图像在定义人类感知方面起着重要作用,操纵这些图像的能力给恶意用户带来了巨大的力量。人工智能的新进展,使伪造人脸照片的质量和生产率得到了全面提高;例如,由gan操纵的人脸在某种程度上是敏感的,以至于无论是计算机还是人都很难识别其有效性。为了提高人工智能从真实人脸中识别人脸图像的准确性,本文提出了一种基于深度学习、卷积神经网络(CNN)和误差水平分析(ELA)等深度学习的增强模型。我们的发现突破了理解DeepFake检测的界限,我们的解决方案检测这些图像是基于图像误差水平和深度学习的概念。我们的模型使用卷积神经网络(CNN)架构,该架构利用误差水平分析(ELA)对图像进行预处理。我们使用了一个包含24,000张图像的数据集,其中真实图像和深度假图像的分割相等,以训练和测试我们的模型。我们能够达到99%的准确率。与大多数DeepFake检测方法相比,该模型具有更短的训练时间和更高的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Deepfakes Using Deep Learning
Images play an important role in defining human perception, and the power to manipulate such images gives immense power to malicious users. The new advancement in Artificial Intelligence, has altogether worked on the quality and productivity in creating counterfeit face pictures; for instance, the face manipulated by GANs is sensible to such an extent that it is hard to recognize the validness, either by the computer or by people. To improve the accuracy of recognizing facial pictures created by AI from genuine facial ones, an enhanced model has been proposed in this paper which is dependent on profound learnings like Deep Learning, Convolutional Neural Network (CNN), and Error Level Analysis (ELA). Our findings push the boundaries of understanding DeepFake detection and our solution to detect these images is based on the concepts of image error level and Deep learning. Our model uses the Convolutional Neural Network (CNN) architecture that utilizes error level analysis (ELA) to pre-process the images. We have utilized a dataset comprising on 24,000 images with equal split of real and deepfake images to traing and test our model. We were able to achieve an accuracy of 99%. The proposed model has a shorter training time and higher efficiency than most other methods for DeepFake detection.
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