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      DISCO: Embodied Navigation and Interaction via Differentiable Scene Semantics and Dual-level Control

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          Abstract

          Building a general-purpose intelligent home-assistant agent skilled in diverse tasks by human commands is a long-term blueprint of embodied AI research, which poses requirements on task planning, environment modeling, and object interaction. In this work, we study primitive mobile manipulations for embodied agents, i.e. how to navigate and interact based on an instructed verb-noun pair. We propose DISCO, which features non-trivial advancements in contextualized scene modeling and efficient controls. In particular, DISCO incorporates differentiable scene representations of rich semantics in object and affordance, which is dynamically learned on the fly and facilitates navigation planning. Besides, we propose dual-level coarse-to-fine action controls leveraging both global and local cues to accomplish mobile manipulation tasks efficiently. DISCO easily integrates into embodied tasks such as embodied instruction following. To validate our approach, we take the ALFRED benchmark of large-scale long-horizon vision-language navigation and interaction tasks as a test bed. In extensive experiments, we make comprehensive evaluations and demonstrate that DISCO outperforms the art by a sizable +8.6% success rate margin in unseen scenes, even without step-by-step instructions. Our code is publicly released at https://github.com/AllenXuuu/DISCO.

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          Author and article information

          Journal
          20 July 2024
          Article
          2407.14758
          a1c38a92-04bc-4560-98cb-e7d4c9ee823a

          http://creativecommons.org/licenses/by-sa/4.0/

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          Custom metadata
          ECCV 2024
          cs.CV

          Computer vision & Pattern recognition
          Computer vision & Pattern recognition

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