Designing Intent Communication for Agent-Human Collaboration
October 23, 2025 Β· Declared Dead Β· π International Conference on Mobile and Ubiquitous Multimedia
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Authors
Yi Li, Francesco Chiossi, Helena Anna Frijns, Jan Leusmann, Julian Rasch, Robin Welsch, Philipp Wintersberger, Florian Michahelles, Albrecht Schmidt
arXiv ID
2510.20409
Category
cs.HC: Human-Computer Interaction
Citations
0
Venue
International Conference on Mobile and Ubiquitous Multimedia
Last Checked
4 months ago
Abstract
As autonomous agents, from self-driving cars to virtual assistants, become increasingly present in everyday life, safe and effective collaboration depends on human understanding of agents' intentions. Current intent communication approaches are often rigid, agent-specific, and narrowly scoped, limiting their adaptability across tasks, environments, and user preferences. A key gap remains: existing models of what to communicate are rarely linked to systematic choices of how and when to communicate, preventing the development of generalizable, multi-modal strategies. In this paper, we introduce a multidimensional design space for intent communication structured along three dimensions: Transparency (what is communicated), Abstraction (when), and Modality (how). We apply this design space to three distinct human-agent collaboration scenarios: (a) bystander interaction, (b) cooperative tasks, and (c) shared control, demonstrating its capacity to generate adaptable, scalable, and cross-domain communication strategies. By bridging the gap between intent content and communication implementation, our design space provides a foundation for designing safer, more intuitive, and more transferable agent-human interactions.
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