Artworks Reimagined: Exploring Human-AI Co-Creation through Body Prompting
- URL: http://arxiv.org/abs/2408.05476v1
- Date: Sat, 10 Aug 2024 08:05:59 GMT
- Title: Artworks Reimagined: Exploring Human-AI Co-Creation through Body Prompting
- Authors: Jonas Oppenlaender, Hannah Johnston, Johanna Silvennoinen, Helena Barranha,
- Abstract summary: This article explores body prompting as input for image generation using generative artificial intelligence.
We implement this concept in an interactive art installation, Artworks Reimagined, designed to transform artworks via body prompting.
We identify three distinct patterns of embodied interaction with the generative AI and present insights into participants' experience of body prompting and AI co-creation.
- Score: 3.7907687118593323
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Image generation using generative artificial intelligence is a popular activity. However, it is almost exclusively performed in the privacy of an individual's home via typing on a keyboard. In this article, we explore body prompting as input for image generation. Body prompting extends interaction with generative AI beyond textual inputs to reconnect the creative act of image generation with the physical act of creating artworks. We implement this concept in an interactive art installation, Artworks Reimagined, designed to transform artworks via body prompting. We deployed the installation at an event with hundreds of visitors in a public and private setting. Our results from a sample of visitors (N=79) show that body prompting was well-received and provides an engaging and fun experience. We identify three distinct patterns of embodied interaction with the generative AI and present insights into participants' experience of body prompting and AI co-creation. We provide valuable recommendations for practitioners seeking to design interactive generative AI experiences in museums, galleries, and other public cultural spaces.
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