Design Exploration of AI-assisted Personal Affective Physicalization
By: Ruishan Wu , Zhuoyang Li , Charles Perin and more
Potential Business Impact:
AI helps make feelings into physical objects.
Personal Affective Physicalization is the process by which individuals express emotions through tangible forms to record, reflect on, and communicate. Yet such physical data representations can be challenging to design due to the abstract nature of emotions. Given the shown potential of AI in detecting emotion and assisting design, we explore opportunities in AI-assisted design of personal affective physicalization using a Research-through-Design method. We developed PhEmotion, a tool for embedding LLM-extracted emotion values from human-AI conversations into parametric design of physical artifacts. A lab study was conducted with 14 participants creating these artifacts based on their personal emotions, with and without AI support. We observed nuances and variations in participants' creative strategies, meaning-making processes and their perceptions of AI support in this context. We found key tensions in AI-human co-creation that provide a nuanced agenda for future research in AI-assisted personal affective physicalization.
Similar Papers
Emotions in the Loop: A Survey of Affective Computing for Emotional Support
Human-Computer Interaction
Computers learn to understand and react to feelings.
Affective Computing and Emotional Data: Challenges and Implications in Privacy Regulations, The AI Act, and Ethics in Large Language Models
Computers and Society
Computers learn to understand and react to feelings.
Artificial Emotion: A Survey of Theories and Debates on Realising Emotion in Artificial Intelligence
Human-Computer Interaction
AI learns to feel emotions like people.