Exploring outlooks towards generative AI-based assistive technologies
for people with Autism
- URL: http://arxiv.org/abs/2305.09815v1
- Date: Tue, 16 May 2023 21:39:38 GMT
- Title: Exploring outlooks towards generative AI-based assistive technologies
for people with Autism
- Authors: Deepak Giri, Erin Brady
- Abstract summary: We examined Reddit conversations regarding Nvdia's new videoconferencing feature which allows participants to maintain eye contact during online meetings.
We found 162 relevant comments discussing the relevance and appropriateness of the technology for people with Autism.
We suggest that developing generative AI-based assistive solutions will have ramifications for human-computer interaction.
- Score: 2.5382095320488665
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: The last few years have significantly increased global interest in generative
artificial intelligence. Deepfakes, which are synthetically created videos,
emerged as an application of generative artificial intelligence. Fake news and
pornographic content have been the two most prevalent negative use cases of
deepfakes in the digital ecosystem. Deepfakes have some advantageous
applications that experts in the subject have thought of in the areas of
filmmaking, teaching, etc. Research on the potential of deepfakes among people
with disabilities is, however, scarce or nonexistent. This workshop paper
explores the potential of deepfakes as an assistive technology. We examined
Reddit conversations regarding Nvdia's new videoconferencing feature which
allows participants to maintain eye contact during online meetings. Through
manual web scraping and qualitative coding, we found 162 relevant comments
discussing the relevance and appropriateness of the technology for people with
Autism. The themes identified from the qualitative codes indicate a number of
concerns for technology among the autistic community. We suggest that
developing generative AI-based assistive solutions will have ramifications for
human-computer interaction (HCI), and present open questions that should be
investigated further in this space.
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