CHOP: Counterfactual Human Preference Labels Improve Obstacle Avoidance in Visuomotor Navigation Policies
Gershom Seneviratne, Jianyu An, Vaibhav Shende, Sahire Ellahy, Yaxita Amin, Kondapi Manasanjani, Samarth Chopra, Jonathan Deepak Kannan, Dinesh Manocha

TL;DR
CHOP introduces a novel method using counterfactual human preference labels to fine-tune visuomotor navigation policies, significantly improving obstacle avoidance, safety, and alignment with human intuition in complex environments.
Contribution
This work presents a new approach that leverages counterfactual human preferences to enhance visuomotor navigation policies for safer and more human-aligned obstacle avoidance.
Findings
Reduces near-collision events by 49.7% on SCAND dataset
Increases obstacle clearance by 19.8% on average
Improves real-world goal success rates by 24.4%
Abstract
Visuomotor navigation policies have shown strong perception-action coupling for embodied agents, yet they often struggle with safe navigation and dynamic obstacle avoidance in complex real-world environments. We introduce CHOP, a novel approach that leverages Counterfactual Human Preference Labels to align visuomotor navigation policies towards human intuition of safety and obstacle avoidance in navigation. In CHOP, for each visual observation, the robot's executed trajectory is included among a set of counterfactual navigation trajectories: alternative trajectories the robot could have followed under identical conditions. Human annotators provide pairwise preference labels over these trajectories based on anticipated outcomes such as collision risk and path efficiency. These aggregated preferences are then used to fine-tune visuomotor navigation policies, aligning their behavior with…
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Taxonomy
TopicsSocial Robot Interaction and HRI · Autonomous Vehicle Technology and Safety · Robotic Path Planning Algorithms
