Feb. 13, 2024, 5:47 a.m. | Joshua Krinsky Alan Bettis Qiuyu Tang Daniel Moreira Aparna Bharati

cs.CV updates on arXiv.org arxiv.org

The social media-fuelled explosion of fake news and misinformation supported by tampered images has led to growth in the development of models and datasets for image manipulation detection. However, existing detection methods mostly treat media objects in isolation, without considering the impact of specific manipulations on viewer perception. Forensic datasets are usually analyzed based on the manipulation operations and corresponding pixel-based masks, but not on the semantics of the manipulation, i.e., type of scene, objects, and viewers' attention to scene …

bias cs.cv datasets detection detection methods development fake fake news growth image images impact manipulation media misinformation objects perception social social media

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