Uncertainty-Aware Non-Prehensile Manipulation with Mobile Manipulators under Object-Induced Occlusion
About
Non-prehensile manipulation using onboard sensing presents a fundamental challenge: the manipulated object occludes the sensor's field of view, creating occluded regions that can lead to collisions. We propose CURA-PPO, a reinforcement learning framework that addresses this challenge by explicitly modeling uncertainty under partial observability. By predicting collision possibility as a distribution, we extract both risk and uncertainty to guide the robot's actions. The uncertainty term encourages active perception, enabling simultaneous manipulation and information gathering to resolve occlusions. When combined with confidence maps that capture observation reliability, our approach enables safe navigation despite severe sensor occlusion. Extensive experiments across varying object sizes and obstacle configurations demonstrate that CURA-PPO achieves up to 3X higher success rates than the baselines, with learned behaviors that handle occlusions. Our method provides a practical solution for autonomous manipulation in cluttered environments using only onboard sensing.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Non-prehensile manipulation | Simulation Environment Uniform Scenario 10,000 episodes (test) | Success Rate (0.5^3)88.73 | 8 | |
| Non-prehensile manipulation | Simulation Environment Adversarial Scenario 10,000 episodes (test) | Success Rate (Tol 0.5^3)78.2 | 8 |