基于贝叶斯估计和模糊理论的语音信号噪声抑制方法

A. Ikuta, H. Orimoto, Kouji Hasegawa
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引用次数: 1

摘要

语音识别系统已应用于工业工厂的检查和维修操作,以及建筑工地等难以手写的地方的记录和报告程序。在这些实际情况下,一些针对周围噪声的对策方法是必不可少的。本文结合骨传导语音和模糊理论,提出了一种利用贝叶斯估计对实际语音信号进行噪声去除的新方法。更具体地说,通过对受周围背景噪声污染的空气传导语音的观察,引入贝叶斯定理,从理论上推导出一种新的去噪算法。在本文提出的噪声抑制方法中,将高频成分降低后的骨传导语音信号作为模糊观测数据,利用模糊事件的概率度量,建立骨传导语音的随机模型。将该方法应用于实际环境中低信噪比的语音信号测量,取得了比仅观察空气传导语音的算法更好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Noise Suppression Method for Speech Signal by Jointly Using Bayesian Estimation and Fuzzy Theory
Speech recognition systems have been applied to inspection and maintenance operations in industrial factories to recording and reporting routines at construction sites, etc. where hand-writing is difficult. In these actual circumstances, some countermeasure methods for surrounding noise are indispensable. In this study, a new method to remove the noise for actual speech signal was proposed by using Bayesian estimation with the aid of bone-conducted speech and fuzzy theory. More specifically, by introducing Bayes’ theorem based on the observation of air-conducted speech contaminated by surrounding background noise, a new type of algorithm for noise removal was theoretically derived. In the proposed noise suppression method, bone-conducted speech signal with the reduced high-frequency components was regarded as fuzzy observation data, and a stochastic model for the bone-conducted speech was derived by applying the probability measure of fuzzy events. The proposed method was applied to speech signals measured in real environment with low SNR, and better results were obtained than an algorithm based on observation of only air-conducted speech.
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