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Main Authors: Yuan, Shuaihang, Wen, Congcong, Shafique, Muhammad, Tzes, Anthony, Fang, Yi
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.07845
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author Yuan, Shuaihang
Wen, Congcong
Shafique, Muhammad
Tzes, Anthony
Fang, Yi
author_facet Yuan, Shuaihang
Wen, Congcong
Shafique, Muhammad
Tzes, Anthony
Fang, Yi
contents The rapid advances in audio analysis underscore its vast potential for humancomputer interaction, environmental monitoring, and public safety; yet, existing audioonly datasets often lack spatial context. To address this gap, we present two novel audiospatial scene datasets, AudioScanNet and AudioRoboTHOR, designed to explore audioconditioned tasks within 3D environments. By integrating audio clips with spatially aligned 3D scenes, our datasets enable research on how audio signals interact with spatial context. To associate audio events with corresponding spatial information, we leverage the common sense reasoning ability of large language models and supplement them with rigorous human verification, This approach offers greater scalability compared to purely manual annotation while maintaining high standards of accuracy, completeness, and diversity, quantified through inter annotator agreement and performance on two benchmark tasks audio based 3D visual grounding and audio based robotic zeroshot navigation. The results highlight the limitations of current audiocentric methods and underscore the practical challenges and significance of our datasets in advancing audio guided spatial learning.
format Preprint
id arxiv_https___arxiv_org_abs_2512_07845
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle AudioScene: Integrating Object-Event Audio into 3D Scenes
Yuan, Shuaihang
Wen, Congcong
Shafique, Muhammad
Tzes, Anthony
Fang, Yi
Sound
Artificial Intelligence
Audio and Speech Processing
The rapid advances in audio analysis underscore its vast potential for humancomputer interaction, environmental monitoring, and public safety; yet, existing audioonly datasets often lack spatial context. To address this gap, we present two novel audiospatial scene datasets, AudioScanNet and AudioRoboTHOR, designed to explore audioconditioned tasks within 3D environments. By integrating audio clips with spatially aligned 3D scenes, our datasets enable research on how audio signals interact with spatial context. To associate audio events with corresponding spatial information, we leverage the common sense reasoning ability of large language models and supplement them with rigorous human verification, This approach offers greater scalability compared to purely manual annotation while maintaining high standards of accuracy, completeness, and diversity, quantified through inter annotator agreement and performance on two benchmark tasks audio based 3D visual grounding and audio based robotic zeroshot navigation. The results highlight the limitations of current audiocentric methods and underscore the practical challenges and significance of our datasets in advancing audio guided spatial learning.
title AudioScene: Integrating Object-Event Audio into 3D Scenes
topic Sound
Artificial Intelligence
Audio and Speech Processing
url https://arxiv.org/abs/2512.07845