Detection of deepfake technology in images and videos

被引:0
|
作者
Liu, Yong [1 ]
Sun, Tianning [2 ]
Wang, Zonghui [3 ]
Zhao, Xu [1 ]
Cheng, Ruosi [1 ]
Shi, Baolan [4 ]
机构
[1] PLA Strateg Support Force Informat Engn Univ, Coll Cyberspace Secur, Zhengzhou 450001, Henan, Peoples R China
[2] Zhejiang Lab, Res Inst Intelligent Networks, Hangzhou 311121, Zhejiang, Peoples R China
[3] Zhejiang Univ, Coll Comp Sci & Technol, Hangzhou 310027, Zhejiang, Peoples R China
[4] Univ Colorado Boulder, Coll Engn & Appl Sci, Boulder, CO 80309 USA
关键词
deepfake technology; fake image and video detection; transfer learning; parameter quantity; detection across datasets;
D O I
10.1504/IJAHUC.2024.136851
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
In response to the low accuracy, weak generalisation, and insufficient consideration of cross-dataset detection in deepfake images and videos, this article adopted the miniXception and long short-term memory (LSTM) combination model to analyse deepfake images and videos. First, the miniXception model was adopted as the backbone network to fully extract spatial features. Secondly, by using LSTM to extract temporal features between two frames, this paper introduces temporal and spatial attention mechanisms after the convolutional layer to better capture long-distance dependencies in the sequence and improve the detection accuracy of the model. Last, cross-dataset training and testing were conducted using the same database and transfer learning method. Focal loss was employed as the loss function in the training model stage to balance the samples and improve the generalisation of the model. The experimental results showed that the detection accuracy on the FaceSwap dataset reached 99.05%, which was 0.39% higher than the convolutional neural network-gated recurrent unit (CNN-GRU) and that the model parameter quantity only needed 10.01 MB, improving the generalisation ability and detection accuracy of the model.
引用
收藏
页码:135 / 148
页数:15
相关论文
共 50 条
  • [31] SegNet: a network for detecting deepfake facial videos
    Chia-Mu Yu
    Kang-Cheng Chen
    Ching-Tang Chang
    Yen-Wu Ti
    Multimedia Systems, 2022, 28 : 793 - 814
  • [32] Encoding based Saliency Detection for Videos and Images
    Mauthner, Thomas
    Possegger, Horst
    Waltner, Georg
    Bischof, Horst
    2015 IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2015, : 2494 - 2502
  • [33] Detecting Deepfake Videos using Digital Watermarking
    Qureshi, Amna
    Megiasw, David
    Kuribayashi, Minoru
    2021 ASIA-PACIFIC SIGNAL AND INFORMATION PROCESSING ASSOCIATION ANNUAL SUMMIT AND CONFERENCE (APSIPA ASC), 2021, : 1786 - 1793
  • [34] SegNet: a network for detecting deepfake facial videos
    Yu, Chia-Mu
    Chen, Kang-Cheng
    Chang, Ching-Tang
    Ti, Yen-Wu
    MULTIMEDIA SYSTEMS, 2022, 28 (03) : 793 - 814
  • [35] Enhancing Deepfake Detection With Diversified Self-Blending Images and Residuals
    Liu, Qingtong
    Xue, Ziyu
    Liu, Haitao
    Liu, Jing
    IEEE ACCESS, 2024, 12 : 46109 - 46117
  • [36] Human detection from images and videos: A survey
    Duc Thanh Nguyen
    Li, Wanqing
    Ogunbona, Philip O.
    PATTERN RECOGNITION, 2016, 51 : 148 - 175
  • [37] Deepfake detection of occluded images using a patch-based approach
    Soleimani, Mahsa
    Nazari, Ali
    Moghaddam, Mohsen Ebrahimi
    MULTIMEDIA SYSTEMS, 2023, 29 (05) : 2669 - 2687
  • [38] Deepfake detection of occluded images using a patch-based approach
    Mahsa Soleimani
    Ali Nazari
    Mohsen Ebrahimi Moghaddam
    Multimedia Systems, 2023, 29 : 2669 - 2687
  • [39] FSBI: Deepfake detection with frequency enhanced self-blended images
    Abul Hasanaath, Ahmed
    Luqman, Hamzah
    Katib, Raed
    Anwar, Saeed
    IMAGE AND VISION COMPUTING, 2025, 154
  • [40] Swapping Face Images with Generative Neural Networks for Deepfake Technology - Experimental Study
    Zendran, Michal
    Rusiecki, Andrzej
    KNOWLEDGE-BASED AND INTELLIGENT INFORMATION & ENGINEERING SYSTEMS (KSE 2021), 2021, 192 : 834 - 843