Robotic Pick-and-Place With Uncertain Object Instance Segmentation and Shape Completion

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Repo contents: Data, LICENSE, Notes, README.md, Robot, Simulation

Authors Marcus Gualtieri, Robert Platt arXiv ID 2010.07892 Category cs.RO: Robotics Citations 0 Venue arXiv.org Repository https://github.com/mgualti/GeomPickPlace/raw/main/Notes/supplemental.pdf โญ 25 Last Checked 2 months ago
Abstract
We consider robotic pick-and-place of partially visible, novel objects, where goal placements are non-trivial, e.g., tightly packed into a bin. One approach is (a) use object instance segmentation and shape completion to model the objects and (b) use a regrasp planner to decide grasps and places displacing the models to their goals. However, it is critical for the planner to account for uncertainty in the perceived models, as object geometries in unobserved areas are just guesses. We account for perceptual uncertainty by incorporating it into the regrasp planner's cost function. We compare seven different costs. One of these, which uses neural networks to estimate probability of grasp and place stability, consistently outperforms uncertainty-unaware costs and evaluates faster than Monte Carlo sampling. On a real robot, the proposed cost results in successfully packing objects tightly into a bin 7.8% more often versus the commonly used minimum-number-of-grasps cost.
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