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A continual deepfake detection benchmark: dataset, methods, and essentials

A continual deepfake detection benchmark: dataset, methods, and essentials
A continual deepfake detection benchmark: dataset, methods, and essentials
There have been emerging a number of benchmarks and techniques for the detection of deepfakes. However, very few works study the detection of incrementally appearing
deepfakes in the real-world scenarios. To simulate the wild scenes, this paper suggests a continual deepfake detection benchmark (CDDB) over a new collection of deepfakes from both known and unknown generative models. The suggested CDDB designs multiple evaluations on the detection over easy, hard, and long sequence of deepfake tasks, with a set of appropriate measures. In addition, we exploit multiple approaches to adapt multi-class incremental learning methods, commonly used in the continual visual recognition, to the continual deepfake detection problem. We evaluate existing methods, including their adapted ones, on the proposed CDDB. Within the proposed benchmark, we explore some commonly known essentials of standard continual learning. Our study provides new insights on these essentials in the context of continual deepfake detection. The suggested CDDB is clearly more challenging than the existing benchmarks, which thus offers a suitable evaluation avenue to the future research. Both data and code are available at https://github.com/Coral79/CDDB.
1339-1349
Li, Chuqiao
ded2daf6-4617-425e-9c24-6f5d0de10649
Huang, Zhiwu
84f477cd-9097-44dd-a33e-ff71f253d36b
Paudel, Danda Pani
a4f946f2-e81a-46b8-b5b9-21d64b074a9d
Wang, Yabin
b2cffa30-6b19-46cb-8bd8-a2bac5c8ff47
Shahbazi, Mohamad
d5231138-46a0-41d4-a88c-ed29e3e32eb4
Hong, Xiaopeng
0c3d9920-679b-484f-88ee-8a45fbdd3a58
Van Gool, Luc
41c67b42-6f3c-4325-a955-631855af9cec
Li, Chuqiao
ded2daf6-4617-425e-9c24-6f5d0de10649
Huang, Zhiwu
84f477cd-9097-44dd-a33e-ff71f253d36b
Paudel, Danda Pani
a4f946f2-e81a-46b8-b5b9-21d64b074a9d
Wang, Yabin
b2cffa30-6b19-46cb-8bd8-a2bac5c8ff47
Shahbazi, Mohamad
d5231138-46a0-41d4-a88c-ed29e3e32eb4
Hong, Xiaopeng
0c3d9920-679b-484f-88ee-8a45fbdd3a58
Van Gool, Luc
41c67b42-6f3c-4325-a955-631855af9cec

Li, Chuqiao, Huang, Zhiwu, Paudel, Danda Pani, Wang, Yabin, Shahbazi, Mohamad, Hong, Xiaopeng and Van Gool, Luc (2023) A continual deepfake detection benchmark: dataset, methods, and essentials. In IEEE/CVF Winter Conference on Applications of Computer Vision. pp. 1339-1349 . (doi:10.1109/WACV56688.2023.00139).

Record type: Conference or Workshop Item (Paper)

Abstract

There have been emerging a number of benchmarks and techniques for the detection of deepfakes. However, very few works study the detection of incrementally appearing
deepfakes in the real-world scenarios. To simulate the wild scenes, this paper suggests a continual deepfake detection benchmark (CDDB) over a new collection of deepfakes from both known and unknown generative models. The suggested CDDB designs multiple evaluations on the detection over easy, hard, and long sequence of deepfake tasks, with a set of appropriate measures. In addition, we exploit multiple approaches to adapt multi-class incremental learning methods, commonly used in the continual visual recognition, to the continual deepfake detection problem. We evaluate existing methods, including their adapted ones, on the proposed CDDB. Within the proposed benchmark, we explore some commonly known essentials of standard continual learning. Our study provides new insights on these essentials in the context of continual deepfake detection. The suggested CDDB is clearly more challenging than the existing benchmarks, which thus offers a suitable evaluation avenue to the future research. Both data and code are available at https://github.com/Coral79/CDDB.

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More information

Published date: 20 November 2023
Venue - Dates: IEEE/CVF Winter Conference on Applications of Computer Vision, , Hawaii, United States, 2023-01-03

Identifiers

Local EPrints ID: 501681
URI: http://eprints.soton.ac.uk/id/eprint/501681
PURE UUID: 353d5044-52ca-42a7-96a8-5202ee9f7430
ORCID for Zhiwu Huang: ORCID iD orcid.org/0000-0002-7385-079X

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Date deposited: 05 Jun 2025 16:57
Last modified: 06 Jun 2025 02:06

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Contributors

Author: Chuqiao Li
Author: Zhiwu Huang ORCID iD
Author: Danda Pani Paudel
Author: Yabin Wang
Author: Mohamad Shahbazi
Author: Xiaopeng Hong
Author: Luc Van Gool

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