Exploring lightweight deep learning techniques for efficient deepfake detection
Deepfakes refer to a form of synthetic media where artificial intelligence and deep learning techniques are used to create or manipulate audio and video content to depict individuals saying or doing things they never actually said or did. Deepfake detection is the ability to differentiate between de...
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Nanyang Technological University
2024
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sg-ntu-dr.10356-1753612024-04-26T15:43:22Z Exploring lightweight deep learning techniques for efficient deepfake detection Chua, Gim Aik (Cai JinYi) Deepu Rajan School of Computer Science and Engineering ASDRajan@ntu.edu.sg Computer and Information Science Deepfakes refer to a form of synthetic media where artificial intelligence and deep learning techniques are used to create or manipulate audio and video content to depict individuals saying or doing things they never actually said or did. Deepfake detection is the ability to differentiate between deepfakes and real media. In this project, we undertake the task of proposing strategies to achieve high deepfake detection accuracy, while attempting to reduce model complexity, size, and inference time, with the goal of pushing the deployment of complex deep-network based solutions such as EfficientNet closer towards hardware constrained environments such as edge devices. In this project, we propose strategies to tackle the deepfake video detection problem and learning strategies that achieved high model accuracy over the FaceForensics++ dataset using EfficientNet as our primary model. We also discuss several model reduction techniques such as architectural changes, model pruning and knowledge distillation to cut our model footprint by half while preserving much of our model’s original performance. Finally, we demonstrate how our proposed model can be turned into a deepfake detection application at the video level for solution completeness. Bachelor's degree 2024-04-22T06:21:54Z 2024-04-22T06:21:54Z 2024 Final Year Project (FYP) Chua, G. A. (. J. (2024). Exploring lightweight deep learning techniques for efficient deepfake detection. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/175361 https://hdl.handle.net/10356/175361 en SCSE23-0504 application/pdf Nanyang Technological University |
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Computer and Information Science Chua, Gim Aik (Cai JinYi) Exploring lightweight deep learning techniques for efficient deepfake detection |
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Deepfakes refer to a form of synthetic media where artificial intelligence and deep learning techniques are used to create or manipulate audio and video content to depict individuals saying or doing things they never actually said or did. Deepfake detection is the ability to differentiate between deepfakes and real media. In this project, we undertake the task of proposing strategies to achieve high deepfake detection accuracy, while attempting to reduce model complexity, size, and inference time, with the goal of pushing the deployment of complex deep-network based solutions such as EfficientNet closer towards hardware constrained environments such as edge devices. In this project, we propose strategies to tackle the deepfake video detection problem and learning strategies that achieved high model accuracy over the FaceForensics++ dataset using EfficientNet as our primary model. We also discuss several model reduction techniques such as architectural changes, model pruning and knowledge distillation to cut our model footprint by half while preserving much of our model’s original performance. Finally, we demonstrate how our proposed model can be turned into a deepfake detection application at the video level for solution completeness. |
author2 |
Deepu Rajan |
author_facet |
Deepu Rajan Chua, Gim Aik (Cai JinYi) |
format |
Final Year Project |
author |
Chua, Gim Aik (Cai JinYi) |
author_sort |
Chua, Gim Aik (Cai JinYi) |
title |
Exploring lightweight deep learning techniques for efficient deepfake detection |
title_short |
Exploring lightweight deep learning techniques for efficient deepfake detection |
title_full |
Exploring lightweight deep learning techniques for efficient deepfake detection |
title_fullStr |
Exploring lightweight deep learning techniques for efficient deepfake detection |
title_full_unstemmed |
Exploring lightweight deep learning techniques for efficient deepfake detection |
title_sort |
exploring lightweight deep learning techniques for efficient deepfake detection |
publisher |
Nanyang Technological University |
publishDate |
2024 |
url |
https://hdl.handle.net/10356/175361 |
_version_ |
1806059781766512640 |