Plug'n Play Task-Level Autonomy for Robotics Using POMDPs and Probabilistic Programs

IEEE ROBOTICS AND AUTOMATION LETTERS(2024)

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摘要
We describe AOS, the first general-purpose system for model-based control of autonomous robots using AI planning that fully supports partial observability and noisy sensing. The AOS provides a code-based language for specifying a generative model of the system, making model specification easier and model sampling efficient. It provides a language for specifying the relation between the model and the code, using which it auto-generates all required integration code. This allows Plug'n Play behavior, which facilitates incremental and modular system design. Extensive experiments on real and simulated robotic platforms demonstrate these advantages.
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关键词
AI-enabled robotics,autonomous agents,integrated planning and control,planning under uncertainty,software architecture for robotic and automation
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