Learning Social Heuristics for Human-Aware Path Planning
- URL: http://arxiv.org/abs/2509.02134v1
- Date: Tue, 02 Sep 2025 09:36:11 GMT
- Title: Learning Social Heuristics for Human-Aware Path Planning
- Authors: Andrea Eirale, Matteo Leonetti, Marcello Chiaberge,
- Abstract summary: Social robotic navigation has been at the center of numerous studies in recent years.<n>We propose Heuristic Planning with Learned Social Value (HPLSV), a method to learn a value function encapsulating the cost of social navigation.
- Score: 3.2957337131930493
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Social robotic navigation has been at the center of numerous studies in recent years. Most of the research has focused on driving the robotic agent along obstacle-free trajectories, respecting social distances from humans, and predicting their movements to optimize navigation. However, in order to really be socially accepted, the robots must be able to attain certain social norms that cannot arise from conventional navigation, but require a dedicated learning process. We propose Heuristic Planning with Learned Social Value (HPLSV), a method to learn a value function encapsulating the cost of social navigation, and use it as an additional heuristic in heuristic-search path planning. In this preliminary work, we apply the methodology to the common social scenario of joining a queue of people, with the intention of generalizing to further human activities.
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