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Hauptverfasser: Anshul, Ashutosh, Gopal, Shreyas, Rajan, Deepu, Chng, Eng Siong
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2511.10212
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author Anshul, Ashutosh
Gopal, Shreyas
Rajan, Deepu
Chng, Eng Siong
author_facet Anshul, Ashutosh
Gopal, Shreyas
Rajan, Deepu
Chng, Eng Siong
contents Recent multimodal deepfake detection methods designed for generalization conjecture that single-stage supervised training struggles to generalize across unseen manipulations and datasets. However, such approaches that target generalization require pretraining over real samples. Additionally, these methods primarily focus on detecting audio-visual inconsistencies and may overlook intra-modal artifacts causing them to fail against manipulations that preserve audio-visual alignment. To address these limitations, we propose a single-stage training framework that enhances generalization by incorporating next-frame prediction for both uni-modal and cross-modal features. Additionally, we introduce a window-level attention mechanism to capture discrepancies between predicted and actual frames, enabling the model to detect local artifacts around every frame, which is crucial for accurately classifying fully manipulated videos and effectively localizing deepfake segments in partially spoofed samples. Our model, evaluated on multiple benchmark datasets, demonstrates strong generalization and precise temporal localization.
format Preprint
id arxiv_https___arxiv_org_abs_2511_10212
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Next-Frame Feature Prediction for Multimodal Deepfake Detection and Temporal Localization
Anshul, Ashutosh
Gopal, Shreyas
Rajan, Deepu
Chng, Eng Siong
Computer Vision and Pattern Recognition
Recent multimodal deepfake detection methods designed for generalization conjecture that single-stage supervised training struggles to generalize across unseen manipulations and datasets. However, such approaches that target generalization require pretraining over real samples. Additionally, these methods primarily focus on detecting audio-visual inconsistencies and may overlook intra-modal artifacts causing them to fail against manipulations that preserve audio-visual alignment. To address these limitations, we propose a single-stage training framework that enhances generalization by incorporating next-frame prediction for both uni-modal and cross-modal features. Additionally, we introduce a window-level attention mechanism to capture discrepancies between predicted and actual frames, enabling the model to detect local artifacts around every frame, which is crucial for accurately classifying fully manipulated videos and effectively localizing deepfake segments in partially spoofed samples. Our model, evaluated on multiple benchmark datasets, demonstrates strong generalization and precise temporal localization.
title Next-Frame Feature Prediction for Multimodal Deepfake Detection and Temporal Localization
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2511.10212