鲁棒远场语音识别声学模型改进研究

Shaofei Xue, Zhijie Yan, Tao Yu, Zhang Liu
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引用次数: 2

摘要

远场语音识别是人机交互的一项重要技术。它的目标是使智能设备能够识别远距离的人类语音。该技术应用于智能家电(智能扬声器、智能电视)、会议转录等多个场景。尽管引入基于深度神经网络的声学模型后,在鲁棒性和远场语音识别方面取得了重大进展,但由于各种因素,如背景噪声、混响甚至人声干扰,远场语音识别仍然是一项具有挑战性的任务。在本文中,我们描述了提高大规模远场语音识别性能的几个技术进展,包括模拟数据生成、前端模块的改进和基于神经网络的声学模型。在几个普通话语音识别任务上的实验结果表明,这些技术进步的结合可以显著优于传统模型。
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A Study on Improving Acoustic Model for Robust and Far-Field Speech Recognition
Far-field speech recognition is an essential technique for man-machine interactions. It aims to enable smart devices to recognize distant human speech. This technology is applied to many scenarios such as smart home appliances (smart loudspeaker, smart TV) and meeting transcription. Despite the significant advancement made in robust and far-field speech recognition after the introduction of deep neural network based acoustic models, the far-field speech recognition remains a challenging task due to various factors such as background noise, reverberation and even human voice interference. In this paper, we describe several technical advances for improving the performance of large-scale far-field speech recognition, including simulated data generation, improvements on front-end modules and neural network based acoustic models. Experimental results on several Mandarin Chinese speech recognition tasks have demonstrated that the combination of these technical advances can significantly outperform the conventional models.
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