SDAIASDec 6, 2021

Audio Deepfake Perceptions in College Going Populations

arXiv:2112.03351v111 citations
Originality Synthesis-oriented
AI Analysis

This research addresses the problem of audio deepfake detection and societal impact for college populations, but it is incremental as it applies existing methods to new survey data.

The study assessed how college students perceive audio deepfakes, finding that political connotations in audio clips influence perceptions of authenticity, even with similar content.

Deepfake is content or material that is generated or manipulated using AI methods, to pass off as real. There are four different deepfake types: audio, video, image and text. In this research we focus on audio deepfakes and how people perceive it. There are several audio deepfake generation frameworks, but we chose MelGAN which is a non-autoregressive and fast audio deepfake generating framework, requiring fewer parameters. This study tries to assess audio deepfake perceptions among college students from different majors. This study also answers the question of how their background and major can affect their perception towards AI generated deepfakes. We also analyzed the results based on different aspects of: grade level, complexity of the grammar used in the audio clips, length of the audio clips, those who knew the term deepfakes and those who did not, as well as the political angle. It is interesting that the results show when an audio clip has a political connotation, it can affect what people think about whether it is real or fake, even if the content is fairly similar. This study also explores the question of how background and major can affect perception towards deepfakes.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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