Exploiting Visual Context Semantics for Sound Source Localization

Xinchi Zhou, Dongzhan Zhou, Di Hu, Hang Zhou, Wanli Ouyang
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引用次数: 5

Abstract

Self-supervised sound source localization in unconstrained visual scenes is an important task of audio-visual learning. In this paper, we propose a visual reasoning module to explicitly exploit the rich visual context semantics, which alleviates the issue of insufficient utilization of visual information in previous works. The learning objectives are carefully designed to provide stronger supervision signals for the extracted visual semantics while enhancing the audio-visual interactions, which lead to more robust feature representations. Extensive experimental results demonstrate that our approach significantly boosts the localization performances on various datasets, even without initializations pretrained on ImageNet. Moreover, with the visual context exploitation, our framework can accomplish both the audio-visual and purely visual inference, which expands the application scope of the sound source localization task and further raises the competitiveness of our approach.
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利用视觉上下文语义进行声源定位
无约束视觉场景下的自监督声源定位是视听学习的重要课题。在本文中,我们提出了一个视觉推理模块,明确地利用了丰富的视觉上下文语义,缓解了以往工作中对视觉信息利用不足的问题。学习目标经过精心设计,为提取的视觉语义提供更强的监督信号,同时增强视听交互,从而获得更鲁棒的特征表示。大量的实验结果表明,即使没有在ImageNet上进行预训练的初始化,我们的方法也能显著提高在各种数据集上的定位性能。此外,通过对视觉上下文的开发,我们的框架既可以完成视听推理,也可以完成纯视觉推理,这扩大了声源定位任务的应用范围,进一步提高了我们的方法的竞争力。
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