A Contact-Driven Framework for Manipulating in the Blind
Muhammad Suhail Saleem, Lai Yuan, and Maxim Likhachev

TL;DR
This paper introduces a comprehensive framework that combines contact feedback, structural priors, and planning to enable robots to manipulate objects in environments where vision is unreliable, demonstrating improved efficiency and robustness.
Contribution
The paper presents a complete, empirically validated framework integrating contact detection, occupancy estimation, and collision-aware planning for blind manipulation tasks.
Findings
Achieved up to 2x reduction in task completion time.
Successfully manipulated valves and retrieved objects in cluttered environments.
Validated system performance in both simulation and real-world scenarios.
Abstract
Robots often face manipulation tasks in environments where vision is inadequate due to clutter, occlusions, or poor lighting--for example, reaching a shutoff valve at the back of a sink cabinet or locating a light switch above a crowded shelf. In such settings, robots, much like humans, must rely on contact feedback to distinguish free from occupied space and navigate around obstacles. Many of these environments often exhibit strong structural priors--for instance, pipes often span across sink cabinets--that can be exploited to anticipate unseen structure and avoid unnecessary collisions. We present a theoretically complete and empirically efficient framework for manipulation in the blind that integrates contact feedback with structural priors to enable robust operation in unknown environments. The framework comprises three tightly coupled components: (i) a contact detection and…
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Taxonomy
TopicsRobot Manipulation and Learning · Teleoperation and Haptic Systems · Social Robot Interaction and HRI
