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