Robot Control
Robot control research aims to develop algorithms and architectures enabling robots to perform complex tasks autonomously and safely. Current efforts focus on improving robustness to uncertainty, using deep reinforcement learning (often with model architectures like Deep Q Networks and diffusion models), and incorporating human-in-the-loop control strategies for enhanced safety and efficiency. These advancements are crucial for deploying robots in diverse real-world settings, impacting fields ranging from industrial automation and assistive robotics to warehouse logistics and human-robot collaboration.
Papers
October 5, 2023
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September 21, 2023
Real-time Batched Distance Computation for Time-Optimal Safe Path Tracking
Shohei Fujii, Quang-Cuong Pham
Representation Abstractions as Incentives for Reinforcement Learning Agents: A Robotic Grasping Case Study
Panagiotis Petropoulakis, Ludwig Gräf, Josip Josifovski, Mohammadhossein Malmir, Alois Knoll
September 16, 2023
September 13, 2023
September 6, 2023
August 29, 2023
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June 15, 2023
June 1, 2023
May 18, 2023