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GraphMapper: Efficient Visual Navigation by Scene Graph Generation

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arxiv 2205.08325 v1 pith:R6QV4I7X submitted 2022-05-17 cs.CV

GraphMapper: Efficient Visual Navigation by Scene Graph Generation

classification cs.CV
keywords sceneenvironmentgraphmapperrepresentationagentsautonomousgraphlearning
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Understanding the geometric relationships between objects in a scene is a core capability in enabling both humans and autonomous agents to navigate in new environments. A sparse, unified representation of the scene topology will allow agents to act efficiently to move through their environment, communicate the environment state with others, and utilize the representation for diverse downstream tasks. To this end, we propose a method to train an autonomous agent to learn to accumulate a 3D scene graph representation of its environment by simultaneously learning to navigate through said environment. We demonstrate that our approach, GraphMapper, enables the learning of effective navigation policies through fewer interactions with the environment than vision-based systems alone. Further, we show that GraphMapper can act as a modular scene encoder to operate alongside existing Learning-based solutions to not only increase navigational efficiency but also generate intermediate scene representations that are useful for other future tasks.

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