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arxiv_ai 96% Match Research Paper Robotics Engineers,AI Researchers in Robotics,Automation Specialists,Industrial Engineers 19 hours ago

MO-SeGMan: Rearrangement Planning Framework for Multi Objective Sequential and Guided Manipulation in Constrained Environments

robotics › manipulation
📄 Abstract

Abstract: In this work, we introduce MO-SeGMan, a Multi-Objective Sequential and Guided Manipulation planner for highly constrained rearrangement problems. MO-SeGMan generates object placement sequences that minimize both replanning per object and robot travel distance while preserving critical dependency structures with a lazy evaluation method. To address highly cluttered, non-monotone scenarios, we propose a Selective Guided Forward Search (SGFS) that efficiently relocates only critical obstacles and to feasible relocation points. Furthermore, we adopt a refinement method for adaptive subgoal selection to eliminate unnecessary pick-and-place actions, thereby improving overall solution quality. Extensive evaluations on nine benchmark rearrangement tasks demonstrate that MO-SeGMan generates feasible motion plans in all cases, consistently achieving faster solution times and superior solution quality compared to the baselines. These results highlight the robustness and scalability of the proposed framework for complex rearrangement planning problems.

Key Contributions

Introduces MO-SeGMan, a novel planner for multi-objective sequential and guided manipulation in highly constrained rearrangement problems. It minimizes replanning and robot travel distance using lazy evaluation and proposes Selective Guided Forward Search (SGFS) for efficient obstacle relocation, leading to faster and higher-quality motion plans.

Business Value

Enables more efficient and robust robotic automation in complex environments like warehouses and manufacturing floors, reducing operational costs and increasing throughput.