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Auteurs principaux: Miao, Qiaomu, Kang, Sinhwa, Marsella, Stacy, DiPaola, Steve, Wang, Chao, Shapiro, Ari
Format: Preprint
Publié: 2022
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Accès en ligne:https://arxiv.org/abs/2208.03561
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author Miao, Qiaomu
Kang, Sinhwa
Marsella, Stacy
DiPaola, Steve
Wang, Chao
Shapiro, Ari
author_facet Miao, Qiaomu
Kang, Sinhwa
Marsella, Stacy
DiPaola, Steve
Wang, Chao
Shapiro, Ari
contents There is strong interest in the generation of synthetic video imagery of people talking for various purposes, including entertainment, communication, training, and advertisement. With the development of deep fake generation models, synthetic video imagery will soon be visually indistinguishable to the naked eye from a naturally capture video. In addition, many methods are continuing to improve to avoid more careful, forensic visual analysis. Some deep fake videos are produced through the use of facial puppetry, which directly controls the head and face of the synthetic image through the movements of the actor, allow the actor to 'puppet' the image of another. In this paper, we address the question of whether one person's movements can be distinguished from the original speaker by controlling the visual appearance of the speaker but transferring the behavior signals from another source. We conduct a study by comparing synthetic imagery that: 1) originates from a different person speaking a different utterance, 2) originates from the same person speaking a different utterance, and 3) originates from a different person speaking the same utterance. Our study shows that synthetic videos in all three cases are seen as less real and less engaging than the original source video. Our results indicate that there could be a behavioral signature that is detectable from a person's movements that is separate from their visual appearance, and that this behavioral signature could be used to distinguish a deep fake from a properly captured video.
format Preprint
id arxiv_https___arxiv_org_abs_2208_03561
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Study of detecting behavioral signatures within DeepFake videos
Miao, Qiaomu
Kang, Sinhwa
Marsella, Stacy
DiPaola, Steve
Wang, Chao
Shapiro, Ari
Computer Vision and Pattern Recognition
Artificial Intelligence
There is strong interest in the generation of synthetic video imagery of people talking for various purposes, including entertainment, communication, training, and advertisement. With the development of deep fake generation models, synthetic video imagery will soon be visually indistinguishable to the naked eye from a naturally capture video. In addition, many methods are continuing to improve to avoid more careful, forensic visual analysis. Some deep fake videos are produced through the use of facial puppetry, which directly controls the head and face of the synthetic image through the movements of the actor, allow the actor to 'puppet' the image of another. In this paper, we address the question of whether one person's movements can be distinguished from the original speaker by controlling the visual appearance of the speaker but transferring the behavior signals from another source. We conduct a study by comparing synthetic imagery that: 1) originates from a different person speaking a different utterance, 2) originates from the same person speaking a different utterance, and 3) originates from a different person speaking the same utterance. Our study shows that synthetic videos in all three cases are seen as less real and less engaging than the original source video. Our results indicate that there could be a behavioral signature that is detectable from a person's movements that is separate from their visual appearance, and that this behavioral signature could be used to distinguish a deep fake from a properly captured video.
title Study of detecting behavioral signatures within DeepFake videos
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2208.03561