DeWinder:利用超声波传感降低单通道风噪

Kuang Yuan, Shuo Han, Swarun Kumar, Bhiksha Raj
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引用次数: 0

摘要

室外环境中的录音质量往往会因为风的存在而下降。由于风噪声的非稳态特性,如何减轻风噪声对单信道语音感知质量的影响仍然是一项重大挑战。之前的噪声抑制工作将风噪视为一般背景噪声,而没有对其特性进行明确建模。在本文中,我们利用超声波作为辅助模态来明确感知气流并描述风噪声的特征。我们提出了多模态深度学习框架,以融合超声波多普勒特征和语音信号来降低风噪。我们的研究结果表明,DeWinder 可以显著提高现有语音增强模型的降噪能力。
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DeWinder: Single-Channel Wind Noise Reduction using Ultrasound Sensing
The quality of audio recordings in outdoor environments is often degraded by the presence of wind. Mitigating the impact of wind noise on the perceptual quality of single-channel speech remains a significant challenge due to its non-stationary characteristics. Prior work in noise suppression treats wind noise as a general background noise without explicit modeling of its characteristics. In this paper, we leverage ultrasound as an auxiliary modality to explicitly sense the airflow and characterize the wind noise. We propose a multi-modal deep-learning framework to fuse the ultrasonic Doppler features and speech signals for wind noise reduction. Our results show that DeWinder can significantly improve the noise reduction capabilities of state-of-the-art speech enhancement models.
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