Automatic gain control and multi-style training for robust small-footprint keyword spotting with deep neural networks

Rohit Prabhavalkar, R. Álvarez, Carolina Parada, Preetum Nakkiran, Tara N. Sainath
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引用次数: 73

Abstract

We explore techniques to improve the robustness of small-footprint keyword spotting models based on deep neural networks (DNNs) in the presence of background noise and in far-field conditions. We find that system performance can be improved significantly, with relative improvements up to 75% in far-field conditions, by employing a combination of multi-style training and a proposed novel formulation of automatic gain control (AGC) that estimates the levels of both speech and background noise. Further, we find that these techniques allow us to achieve competitive performance, even when applied to DNNs with an order of magnitude fewer parameters than our base-line.
基于深度神经网络的鲁棒小足迹关键词识别的自动增益控制和多风格训练
我们探索了在存在背景噪声和远场条件下提高基于深度神经网络(dnn)的小足迹关键字识别模型的鲁棒性的技术。我们发现,通过结合多风格训练和提出的新型自动增益控制(AGC)公式来估计语音和背景噪声的水平,系统性能可以显著提高,在远场条件下相对提高高达75%。此外,我们发现这些技术使我们能够获得具有竞争力的性能,即使应用于参数比基线少一个数量级的dnn。
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