深度学习特征在面部属性操作检测中的应用

Z. Akhtar, Murshida Rahman Mouree, D. Dasgupta
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引用次数: 9

摘要

机器学习合成的人脸样本,通常被称为DeepFakes,是一个严重的问题,威胁着互联网和人脸识别系统上信息的完整性。针对面部操纵的主要防御措施之一是DeepFakes检测。在本文中,我们首先使用公开可用的MUCT数据库创建了一个新的DeepFakes数据集,该数据库包含各种面部操作集。特别是,我们使用了带有11种不同滤镜的智能手机FaceApp(即,每种滤镜都伴随着不同的面部操作),如性别转换、换脸、纹身和发型变化。深度学习特征最近在各种实际应用中表现出了出色的性能。因此,利用收集到的数据集,我们研究了深度特征在不同场景下识别DeepFakes的效率。我们对卷积神经网络(cnn)模型进行了严格的对比分析,并通过迁移学习,大量利用了VGG16、SqueezNet、DenseNet、ResaNet和GoogleNet等深度架构进行面部操纵检测。经验结果表明,基于深度特征的DeepFakes检测系统在训练和测试相同类型的操作时获得了显着的准确性。但是当遇到训练阶段没有使用过的新的操作类型时,它们的性能会急剧下降,泛化能力较低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Utility of Deep Learning Features for Facial Attributes Manipulation Detection
ML-synthesized face samples, frequently called DeepFakes, is a serious issue menacing the integrity of information on the Internet and face recognition systems. One of the main defenses against face manipulations is DeepFakes detection. In this paper, we first created a new DeepFakes dataset using a publicly available MUCT database, which contains diverse set of facial manipulations. In particular, we employed smartphone FaceApp with eleven different filters (i.e., every filter concurs with a different facial manipulation) such as gender conversion, face swapping, tattoo and hair style changes. Deep learning features have recently demonstrated magnificent performances in various real-world applications. Therefore, with collected dataset, we study the efficiency of deep features for identifying the DeepFakes under different scenarios. We performed a rigorous and comparative analysis of a convolutional neural networks (CNNs) model and immensely utilized deep architectures such as VGG16, SqueezNet, DenseNet, ResaNet, and GoogleNet via transfer learning for face manipulation detection. Empirical results show that deep features based DeepFakes detection systems attain notable accuracies when trained and tested on same kind of manipulation. But their performances drop drastically when they encounter with novel manipulation type that was not used during the training stage, thereby having low generalization capability.
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