Detecting Fake Faces with AI: A Deep Neural Network Improvement Project

L.Ravi Kumar, Ram Kumar Yadav, S.Yuvaraj
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引用次数: 0

Abstract

Forgeries created with deep face techniques have become increasingly common in several fields in recent years, including politics, education, and the democratic process, and as a result, many scholars are working on strategies to detect and prevent such forgeries. Since these programmes typically employ machine learning or fuzzy logic, accurate data classification is not something they can promise. However, it is common knowledge that forgery detection methods necessitate a shared, massive dataset, and that facial recognition systems benefit most from deep learning’s precision. Our suggested approaches make use of images and videos from the VGG-19 shared dataset, with genetic algorithm-based feature extraction and an improved convolutional neural network handling classifications for the trained datasets, respectively. A gaussian filter is used as preliminary processing on the VGG-19 common dataset.
用AI检测假脸:一个深度神经网络改进项目
近年来,在政治、教育和民主进程等多个领域,用深脸技术制作的伪造作品变得越来越普遍,因此,许多学者正在研究检测和防止此类伪造的策略。由于这些程序通常使用机器学习或模糊逻辑,因此它们无法保证准确的数据分类。然而,众所周知,伪造检测方法需要一个共享的、庞大的数据集,而面部识别系统从深度学习的精确度中获益最多。我们建议的方法利用来自VGG-19共享数据集的图像和视频,分别使用基于遗传算法的特征提取和改进的卷积神经网络对训练数据集进行分类。采用高斯滤波器对VGG-19公共数据集进行初步处理。
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