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DARE: Diffusion Policy for Autonomous Robot Exploration

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Autonomous robot exploration requires a robot to efficiently explore and map unknown environments. Compared to conventional methods that can only optimize paths based on the current robot belief, learning-based methods show the potential to achieve improved performance by drawing on past experiences to reason about unknown areas. In this paper, we propose DARE, a novel generative approach that leverages diffusion models trained on expert demonstrations, which can explicitly generate an exploration path through one-time inference. We build DARE upon an attention-based encoder and a diffusion policy model, and introduce ground truth optimal demonstrations for training to learn better patterns for exploration. The trained planner can reason about the partial belief to recognize the potential structure in unknown areas and consider these areas during path planning. Our experiments demonstrate that DARE achieves on-par performance with both conventional and learning-based state-of-the-art exploration planners, as well as good generalizability in both simulations and real-life scenarios.

Yuhong Cao, Jeric Lew, Jingsong Liang, Jin Cheng, Guillaume Sartoretti• 2024

Related benchmarks

TaskDatasetResultRank
Autonomous ExplorationMaze datasets
Distance (m)565
7
Robotic ExplorationGazebo 64m x 85m high-fidelity simulation (Scene 1)
Distance (m)681.4
4
Robotic ExplorationGazebo 92m x 74m high-fidelity simulation (Scene 2)
Distance (m)797.4
4
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