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Prioritized Planning for Target-Oriented Manipulation via Hierarchical Stacking Relationship Prediction

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arxiv 2303.07828 v2 pith:4OY35CTO submitted 2023-03-14 cs.RO

Prioritized Planning for Target-Oriented Manipulation via Hierarchical Stacking Relationship Prediction

classification cs.RO
keywords stackingrelationshipobjectsdecisionsgraspingdecisiongenerategenerates
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In scenarios involving the grasping of multiple targets, the learning of stacking relationships between objects is fundamental for robots to execute safely and efficiently. However, current methods lack subdivision for the hierarchy of stacking relationship types. In scenes where objects are mostly stacked in an orderly manner, they are incapable of performing human-like and high-efficient grasping decisions. This paper proposes a perception-planning method to distinguish different stacking types between objects and generate prioritized manipulation order decisions based on given target designations. We utilize a Hierarchical Stacking Relationship Network (HSRN) to discriminate the hierarchy of stacking and generate a refined Stacking Relationship Tree (SRT) for relationship description. Considering that objects with high stacking stability can be grasped together if necessary, we introduce an elaborate decision-making planner based on the Partially Observable Markov Decision Process (POMDP), which leverages observations and generates the least grasp-consuming decision chain with robustness and is suitable for simultaneously specifying multiple targets. To verify our work, we set the scene to the dining table and augment the REGRAD dataset with a set of common tableware models for network training. Experiments show that our method effectively generates grasping decisions that conform to human requirements, and improves the implementation efficiency compared with existing methods on the basis of guaranteeing the success rate.

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