HITL-D: Human In The Loop Diffusion Assisted Shared Control
摘要
Autonomous manipulation systems have achieved remarkable capabilities, yet the integration of human expertise with diffusion-based policies in shared control remains relatively unexplored. In this paper, we propose Human-In-The-Loop Diffusion (HITL-D), a shared control framework that enhances user performance in multi-step, insertion, and fine manipulation tasks. HITL-D leverages a novel combination of diffusion-based policies and human control to provide autonomous end effector orientation updates conditioned on a scene point cloud and the Cartesian position of the end effector. This approach reduces the number of joystick control axes required, thereby lowering mental workload. In a multi-task user study with 12 participants, HITL-D reduced average task completion times by 40%, decreased perceived workload by 37%, and improved Likert-scale ratings for independence, intuitiveness, and confidence compared to traditional teleoperation methods. These results demonstrate that HITL-D effectively integrates human expertise with autonomous assistance, improving both objective and subjective aspects of teleoperation.
引用
@article{arxiv.2605.21460,
title = {HITL-D: Human In The Loop Diffusion Assisted Shared Control},
author = {Riley Zilka and Sergey Khlynovskiy and Allie Wang and Martin Jagersand},
journal= {arXiv preprint arXiv:2605.21460},
year = {2026}
}
备注
Accepted for presentation at ICRA 2026