M-BEST-RQ: 适用于智能眼镜的多通道语音基础模型

Yufeng Yang, Desh Raj, Ju Lin, Niko Moritz, Junteng Jia, Gil Keren, Egor Lakomkin, Yiteng Huang, Jacob Donley, Jay Mahadeokar, Ozlem Kalinli
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引用次数: 0

摘要

随着智能眼镜等多通道可穿戴设备的日益普及,有针对性的语音识别和增强听力等应用激增。然而,目前解决这些任务的方法使用的是独立训练的模型,可能无法从大量无标记数据中获益。在本文中,我们提出了首个用于智能眼镜的多通道语音基础模型 M-BEST-RQ,该模型旨在利用大规模自监督学习(SSL),采用与阵列几何无关的方法。之前关于多通道语音 SSL 的研究只在模拟环境中进行评估,而我们则从 MMCSG 和 EasyCom 数据集中收集了一套真实的下游任务来评估我们的模型,即 (i) 对话式自动语音识别 (ASR)、(ii) 球形主动声源定位和 (iii) 眼镜佩戴者语音活动检测。我们的研究表明,通用 M-BEST-RQ 编码器在所有任务中都能达到或超过监督模型。特别是在会话自动语音识别(ASR)任务中,仅使用 8 小时的标注语音,我们的模型就超过了使用 2000 小时标注数据训练的有监督自动语音识别基础模型,这证明了我们方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
M-BEST-RQ: A Multi-Channel Speech Foundation Model for Smart Glasses
The growing popularity of multi-channel wearable devices, such as smart glasses, has led to a surge of applications such as targeted speech recognition and enhanced hearing. However, current approaches to solve these tasks use independently trained models, which may not benefit from large amounts of unlabeled data. In this paper, we propose M-BEST-RQ, the first multi-channel speech foundation model for smart glasses, which is designed to leverage large-scale self-supervised learning (SSL) in an array-geometry agnostic approach. While prior work on multi-channel speech SSL only evaluated on simulated settings, we curate a suite of real downstream tasks to evaluate our model, namely (i) conversational automatic speech recognition (ASR), (ii) spherical active source localization, and (iii) glasses wearer voice activity detection, which are sourced from the MMCSG and EasyCom datasets. We show that a general-purpose M-BEST-RQ encoder is able to match or surpass supervised models across all tasks. For the conversational ASR task in particular, using only 8 hours of labeled speech, our model outperforms a supervised ASR baseline that is trained on 2000 hours of labeled data, which demonstrates the effectiveness of our approach.
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