Maximal Adaptation, Minimal Guidance: Permissive Reactive Robot Task Planning with Humans in the Loop
By: Oz Gitelson , Satya Prakash Nayak , Ritam Raha and more
Potential Business Impact:
Robot learns to work with people without getting in their way.
We present a novel framework for human-robot \emph{logical} interaction that enables robots to reliably satisfy (infinite horizon) temporal logic tasks while effectively collaborating with humans who pursue independent and unknown tasks. The framework combines two key capabilities: (i) \emph{maximal adaptation} enables the robot to adjust its strategy \emph{online} to exploit human behavior for cooperation whenever possible, and (ii) \emph{minimal tunable feedback} enables the robot to request cooperation by the human online only when necessary to guarantee progress. This balance minimizes human-robot interference, preserves human autonomy, and ensures persistent robot task satisfaction even under conflicting human goals. We validate the approach in a real-world block-manipulation task with a Franka Emika Panda robotic arm and in the Overcooked-AI benchmark, demonstrating that our method produces rich, \emph{emergent} cooperative behaviors beyond the reach of existing approaches, while maintaining strong formal guarantees.
Similar Papers
Adaptive Human-Robot Collaborative Missions using Hybrid Task Planning
Multiagent Systems
Helps robots and people work together better.
Intuitive Programming, Adaptive Task Planning, and Dynamic Role Allocation in Human-Robot Collaboration
Robotics
Robots learn to work with people better.
A Task-Efficient Reinforcement Learning Task-Motion Planner for Safe Human-Robot Cooperation
Robotics
Robots learn to work safely with people.