USA-Net: Unified Semantic and Affordance Representations for Robot Memory
In order for robots to follow open-ended instructions like "go open the brown cabinet over the sink", they require an understanding of both the scene geometry and the semantics of their environment. Robotic systems often handle these through separate pipelines, sometimes using very differe...
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Zusammenfassung: | In order for robots to follow open-ended instructions like "go open the brown
cabinet over the sink", they require an understanding of both the scene
geometry and the semantics of their environment. Robotic systems often handle
these through separate pipelines, sometimes using very different representation
spaces, which can be suboptimal when the two objectives conflict. In this work,
we present USA-Net, a simple method for constructing a world representation
that encodes both the semantics and spatial affordances of a scene in a
differentiable map. This allows us to build a gradient-based planner which can
navigate to locations in the scene specified using open-ended vocabulary. We
use this planner to consistently generate trajectories which are both shorter
5-10% shorter and 10-30% closer to our goal query in CLIP embedding space than
paths from comparable grid-based planners which don't leverage gradient
information. To our knowledge, this is the first end-to-end differentiable
planner optimizes for both semantics and affordance in a single implicit map.
Code and visuals are available at our website: https://usa.bolte.cc/ |
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DOI: | 10.48550/arxiv.2304.12164 |