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ALORE: Autonomous Large-Object Rearrangement with a Legged Manipulator

About

Endowing robots with the ability to rearrange various large and heavy objects, such as furniture, can substantially alleviate human workload. However, this task is extremely challenging due to the need to interact with diverse objects and efficiently rearrange multiple objects in complex environments while ensuring collision-free loco-manipulation. In this work, we present ALORE, an autonomous large-object rearrangement system for a legged manipulator that can rearrange various large objects across diverse scenarios. The proposed system is characterized by three main features: (i) a hierarchical reinforcement learning training pipeline for multi-object environment learning, where a high-level object velocity controller is trained on top of a low-level whole-body controller to achieve efficient and stable joint learning across multiple objects; (ii) two key modules, a unified interaction configuration representation and an object velocity estimator, that allow a single policy to regulate planar velocity of diverse objects accurately; and (iii) a task-and-motion planning framework that jointly optimizes object visitation order and object-to-target assignment, improving task efficiency while enabling online replanning. Comparisons against strong baselines show consistent superiority in policy generalization, object-velocity tracking accuracy, and multi-object rearrangement efficiency. Key modules are systematically evaluated, and extensive simulations and real-world experiments are conducted to validate the robustness and effectiveness of the entire system, which successfully completes 8 continuous loops to rearrange 32 chairs over nearly 40 minutes without a single failure, and executes long-distance autonomous rearrangement over an approximately 40 m route. The open-source packages are available at https://zhihaibi.github.io/Alore/.

Zhihai Bi, Yushan Zhang, Kai Chen, Guoyang Zhao, Yulin Li, Jun Ma• 2026

Related benchmarks

TaskDatasetResultRank
Object Velocity TrackingBin
MAE vx (m/s)0.0456
7
Object Velocity TrackingCHAIR
MAE vx (m/s)0.0409
7
Object Velocity TrackingTable
MAE vx (m/s)0.0323
7
Object Velocity TrackingBin, Chair, and Table Aggregate
MAE0.0486
7
Reference TrackingFigure-eight path 12m x 6m (test)
Max Abs Error (m)0.0764
4
Task PlanningBin rearrangement Office Scenario 1.0 (test)
Time (s)224
2
Task PlanningChair rearrangement Office Scenario 1.0 (test)
Time (s)154
2
Task PlanningTable rearrangement Office Scenario 1.0 (test)
Time (s)191
2
Object RearrangementOffice 20 m × 20 m (simulation)
Bin Success Rate100
1
Object RearrangementLibrary 30 m × 30 m (simulation)
Bin Success Rate100
1
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