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Main Authors: Sridhar, Arvind Krishna, Guo, Yinyi, Visser, Erik
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.16334
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author Sridhar, Arvind Krishna
Guo, Yinyi
Visser, Erik
author_facet Sridhar, Arvind Krishna
Guo, Yinyi
Visser, Erik
contents Spatial audio understanding aims to enable machines to interpret complex auditory scenes, particularly when sound sources move over time. In this work, we study Spatial Audio Question Answering (Spatial AQA) with a focus on movement reasoning, where a model must infer object motion, position, and directional changes directly from stereo audio. First, we introduce a movement-centric spatial audio augmentation framework that synthesizes diverse motion patterns from isolated mono audio events, enabling controlled and scalable training data generation. Second, we propose an end-to-end multimodal finetuning approach with a thinking mode, which allows audio-language models to produce explicit intermediate reasoning steps before predicting an answer. Third, we investigate the impact of query-conditioned source separation as a preprocessing stage and compare three inference regimes: no masking, an audio grounding model (AGM), and ground-truth masks. Our results show that reasoning amplifies the benefits of source separation, with thinking mode showing significant improvement of +5.1% when a single event is present in the question. These findings highlight the interplay between movement modeling, reasoning, and separation quality, offering new insights for advancing spatial audio understanding.
format Preprint
id arxiv_https___arxiv_org_abs_2602_16334
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Spatial Audio Question Answering and Reasoning on Dynamic Source Movements
Sridhar, Arvind Krishna
Guo, Yinyi
Visser, Erik
Sound
Artificial Intelligence
Spatial audio understanding aims to enable machines to interpret complex auditory scenes, particularly when sound sources move over time. In this work, we study Spatial Audio Question Answering (Spatial AQA) with a focus on movement reasoning, where a model must infer object motion, position, and directional changes directly from stereo audio. First, we introduce a movement-centric spatial audio augmentation framework that synthesizes diverse motion patterns from isolated mono audio events, enabling controlled and scalable training data generation. Second, we propose an end-to-end multimodal finetuning approach with a thinking mode, which allows audio-language models to produce explicit intermediate reasoning steps before predicting an answer. Third, we investigate the impact of query-conditioned source separation as a preprocessing stage and compare three inference regimes: no masking, an audio grounding model (AGM), and ground-truth masks. Our results show that reasoning amplifies the benefits of source separation, with thinking mode showing significant improvement of +5.1% when a single event is present in the question. These findings highlight the interplay between movement modeling, reasoning, and separation quality, offering new insights for advancing spatial audio understanding.
title Spatial Audio Question Answering and Reasoning on Dynamic Source Movements
topic Sound
Artificial Intelligence
url https://arxiv.org/abs/2602.16334