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Learning Semantic-Agnostic and Spatial-Aware Representation for Generalizable Visual-Audio Navigation

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arxiv 2304.10773 v2 pith:MNIZKG3K submitted 2023-04-21 cs.RO

Learning Semantic-Agnostic and Spatial-Aware Representation for Generalizable Visual-Audio Navigation

classification cs.RO
keywords navigationrepresentationsoundvisual-audioagentaudioauxiliarycategories
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Visual-audio navigation (VAN) is attracting more and more attention from the robotic community due to its broad applications, \emph{e.g.}, household robots and rescue robots. In this task, an embodied agent must search for and navigate to the sound source with egocentric visual and audio observations. However, the existing methods are limited in two aspects: 1) poor generalization to unheard sound categories; 2) sample inefficient in training. Focusing on these two problems, we propose a brain-inspired plug-and-play method to learn a semantic-agnostic and spatial-aware representation for generalizable visual-audio navigation. We meticulously design two auxiliary tasks for respectively accelerating learning representations with the above-desired characteristics. With these two auxiliary tasks, the agent learns a spatially-correlated representation of visual and audio inputs that can be applied to work on environments with novel sounds and maps. Experiment results on realistic 3D scenes (Replica and Matterport3D) demonstrate that our method achieves better generalization performance when zero-shot transferred to scenes with unseen maps and unheard sound categories.

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