Author:
Chanda Kunal,Ahmed Washef,Banik Souvik
Publisher
Springer Nature Singapore
Reference11 articles.
1. John J, Sherif BV (2022) Comparative analysis on different DeepFake detection methods and semi supervised GAN architecture for deepfake detection. In: 2022 Sixth International Conference on I-SMAC (IoT in Social, Mobile, Analytics and Cloud) (I-SMAC), 10–12 November 2022
2. Pan D, Sun L, Wang R, Zhang X, Sinnott R (2020) Deepfake detection, at international conference on big data computing, applications and technologies (BDCAT) , Melbourne, Australia, 978–0–7381–2396–7/20/IEEE
3. Dheeraj JC, Nandakumar K, Aditya AV, Chethan BS, Kartheek GCR (2021) Detecting Deepfake Using Deep Learning, 978–1–6654–3559–8/21/IEEE. In: 6th international conference on recent trends on electronics, information, communication & technology (RTEICT)
4. Kumar N, Pranav P, Nirnay V, Geetha V (2021) Deepfake image detection using CNNs and transfer learning, 978–1–6654–1509–5/21 IEEE 2021. In: International conference on computing, communication and green engineering (CCGE), Pune
5. Singh Raj K, Sarda PV, Aggarwal S, Visshwakarma DK (2021) Demystifying deepfakes using deep learning. IEEE Xplore Part Number: CFP21K24-ART. In: Proceedings of fifth international conference on computing methologies and communication (ICCMC 2021)