Improving 6D Pose Estimation of Objects in Clutter via Physics-aware Monte Carlo Tree Search
Chaitanya Mitash, Abdeslam Boularias, Kostas E. Bekris

TL;DR
This paper introduces a physics-aware Monte Carlo Tree Search method to improve 6D object pose estimation in cluttered scenes by considering scene-level physical interactions, resulting in more accurate pose hypotheses.
Contribution
It presents a novel global optimization approach combining clustering and MCTS to refine object poses considering physical interactions in cluttered environments.
Findings
Significantly improves pose accuracy over registration methods.
Efficiently searches pose combinations using MCTS guided by scene rendering similarity.
Handles occlusions and object interactions effectively in cluttered scenes.
Abstract
This work proposes a process for efficiently searching over combinations of individual object 6D pose hypotheses in cluttered scenes, especially in cases involving occlusions and objects resting on each other. The initial set of candidate object poses is generated from state-of-the-art object detection and global point cloud registration techniques. The best-scored pose per object by using these techniques may not be accurate due to overlaps and occlusions. Nevertheless, experimental indications provided in this work show that object poses with lower ranks may be closer to the real poses than ones with high ranks according to registration techniques. This motivates a global optimization process for improving these poses by taking into account scene-level physical interactions between objects. It also implies that the Cartesian product of candidate poses for interacting objects must be…
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