有效的实时噪声估计没有明确的语音,非语音检测:对AURORA语料库的评估

Nicholas Evans, J. Mason, Benoit G. B. Fauve
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引用次数: 8

摘要

本文研究了语音增强和自动语音识别中的噪声估计问题。在移动通信环境下,对实时运行的低资源算法有要求。本文描述了一种先前发表的方法的实现,称为基于分位数的噪声估计,集成在传统的谱减法框架中。其新颖之处在于噪声估计过程的效率。对AURORA语料库进行了评估,并显示出效率的显著提高。自动语音识别结果显示平均相对于基线提高了26%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient real-time noise estimation without explicit speech, non-speech detection: an assessment on the AURORA corpus
This paper addresses the problem of noise estimation for speech enhancement and automatic speech recognition. In the context of mobile telephony, there is a requirement for low resource algorithms which must run at real-time. This paper describes the implementation of a previously published approach, termed quantile-based noise estimation, integrated within a conventional spectral subtraction framework. The novelty lies in the efficiency of the noise estimation process. Assessment is carried out on the AURORA corpus and demonstrates significant improvements in efficiency. Automatic speech recognition results show an average relative improvement of 26% over the baseline.
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