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Hauptverfasser: Jia, Yanhao, Xie, Ji, Jivaganesh, S, Li, Hao, Wu, Xu, Zhang, Mengmi
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2505.11217
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author Jia, Yanhao
Xie, Ji
Jivaganesh, S
Li, Hao
Wu, Xu
Zhang, Mengmi
author_facet Jia, Yanhao
Xie, Ji
Jivaganesh, S
Li, Hao
Wu, Xu
Zhang, Mengmi
contents Imagine hearing a dog bark and turning toward the sound only to see a parked car, while the real, silent dog sits elsewhere. Such sensory conflicts test perception, yet humans reliably resolve them by prioritizing sound over misleading visuals. Despite advances in multimodal AI integrating vision and audio, little is known about how these systems handle cross-modal conflicts or whether they favor one modality. In this study, we systematically examine modality bias and conflict resolution in AI sound localization. We assess leading multimodal models and benchmark them against human performance in psychophysics experiments across six audiovisual conditions, including congruent, conflicting, and absent cues. Humans consistently outperform AI, demonstrating superior resilience to conflicting or missing visuals by relying on auditory information. In contrast, AI models often default to visual input, degrading performance to near chance levels. To address this, we propose a neuroscience-inspired model, EchoPin, which uses a stereo audio-image dataset generated via 3D simulations. Even with limited training data, EchoPin surpasses existing benchmarks. Notably, it also mirrors human-like horizontal localization bias favoring left-right precision-likely due to the stereo audio structure reflecting human ear placement. These findings underscore how sensory input quality and system architecture shape multimodal representation accuracy.
format Preprint
id arxiv_https___arxiv_org_abs_2505_11217
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Seeing Sound, Hearing Sight: Uncovering Modality Bias and Conflict of AI models in Sound Localization
Jia, Yanhao
Xie, Ji
Jivaganesh, S
Li, Hao
Wu, Xu
Zhang, Mengmi
Sound
Artificial Intelligence
Computer Vision and Pattern Recognition
Multimedia
Audio and Speech Processing
Imagine hearing a dog bark and turning toward the sound only to see a parked car, while the real, silent dog sits elsewhere. Such sensory conflicts test perception, yet humans reliably resolve them by prioritizing sound over misleading visuals. Despite advances in multimodal AI integrating vision and audio, little is known about how these systems handle cross-modal conflicts or whether they favor one modality. In this study, we systematically examine modality bias and conflict resolution in AI sound localization. We assess leading multimodal models and benchmark them against human performance in psychophysics experiments across six audiovisual conditions, including congruent, conflicting, and absent cues. Humans consistently outperform AI, demonstrating superior resilience to conflicting or missing visuals by relying on auditory information. In contrast, AI models often default to visual input, degrading performance to near chance levels. To address this, we propose a neuroscience-inspired model, EchoPin, which uses a stereo audio-image dataset generated via 3D simulations. Even with limited training data, EchoPin surpasses existing benchmarks. Notably, it also mirrors human-like horizontal localization bias favoring left-right precision-likely due to the stereo audio structure reflecting human ear placement. These findings underscore how sensory input quality and system architecture shape multimodal representation accuracy.
title Seeing Sound, Hearing Sight: Uncovering Modality Bias and Conflict of AI models in Sound Localization
topic Sound
Artificial Intelligence
Computer Vision and Pattern Recognition
Multimedia
Audio and Speech Processing
url https://arxiv.org/abs/2505.11217