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Main Authors: Batra, Arnesh, Kumar, Anushk, Khemani, Jashn, Gumber, Arush, Jain, Arhan, Gupta, Somil
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.05538
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author Batra, Arnesh
Kumar, Anushk
Khemani, Jashn
Gumber, Arush
Jain, Arhan
Gupta, Somil
author_facet Batra, Arnesh
Kumar, Anushk
Khemani, Jashn
Gumber, Arush
Jain, Arhan
Gupta, Somil
contents The rapid advancement of deep generative models has significantly improved the realism of synthetic media, presenting both opportunities and security challenges. While deepfake technology has valuable applications in entertainment and accessibility, it has emerged as a potent vector for misinformation campaigns, particularly on social media. Existing detection frameworks struggle to distinguish between benign and adversarially generated deepfakes engineered to manipulate public perception. To address this challenge, we introduce SocialDF, a curated dataset reflecting real-world deepfake challenges on social media platforms. This dataset encompasses high-fidelity deepfakes sourced from various online ecosystems, ensuring broad coverage of manipulative techniques. We propose a novel LLM-based multi-factor detection approach that combines facial recognition, automated speech transcription, and a multi-agent LLM pipeline to cross-verify audio-visual cues. Our methodology emphasizes robust, multi-modal verification techniques that incorporate linguistic, behavioral, and contextual analysis to effectively discern synthetic media from authentic content.
format Preprint
id arxiv_https___arxiv_org_abs_2506_05538
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle SocialDF: Benchmark Dataset and Detection Model for Mitigating Harmful Deepfake Content on Social Media Platforms
Batra, Arnesh
Kumar, Anushk
Khemani, Jashn
Gumber, Arush
Jain, Arhan
Gupta, Somil
Machine Learning
Multimedia
The rapid advancement of deep generative models has significantly improved the realism of synthetic media, presenting both opportunities and security challenges. While deepfake technology has valuable applications in entertainment and accessibility, it has emerged as a potent vector for misinformation campaigns, particularly on social media. Existing detection frameworks struggle to distinguish between benign and adversarially generated deepfakes engineered to manipulate public perception. To address this challenge, we introduce SocialDF, a curated dataset reflecting real-world deepfake challenges on social media platforms. This dataset encompasses high-fidelity deepfakes sourced from various online ecosystems, ensuring broad coverage of manipulative techniques. We propose a novel LLM-based multi-factor detection approach that combines facial recognition, automated speech transcription, and a multi-agent LLM pipeline to cross-verify audio-visual cues. Our methodology emphasizes robust, multi-modal verification techniques that incorporate linguistic, behavioral, and contextual analysis to effectively discern synthetic media from authentic content.
title SocialDF: Benchmark Dataset and Detection Model for Mitigating Harmful Deepfake Content on Social Media Platforms
topic Machine Learning
Multimedia
url https://arxiv.org/abs/2506.05538