Speech enhancement algorithm based on independent component analysis in noisy environment

X. Hao, Yu Shi, Xiaohong Yan
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Abstract

Voice signal enhancement has broad application prospects, but the existing methods have limited effect in conference rooms or teleconferences in a strong noise environment. In order to enhance the speech effect, this paper proposes a speech enhancement algorithm based on time-delay estimation of microphone sound source localization. The algorithm combines Independent Component Analysis (ICA) and Wiener filtering. The algorithm uses the negative entropy of fast independent component analysis algorithm (FastICA) to extract feature and separate the speech signal, and then uses Wiener filtering to minimize the mean square error between the estimated signal and the speech signal extracted by the feature in the ICA domain. The paper deduces the unmixing matrix of the ICA transform in detail, and simulates the speech enhancement capability of the algorithm through Matlab. Simulation results show that the algorithm has obvious enhancement effect, and it can effectively reduce noise.
噪声环境下基于独立分量分析的语音增强算法
语音信号增强具有广阔的应用前景,但现有方法在强噪声环境下的会议室或电话会议中效果有限。为了增强语音效果,本文提出了一种基于时延估计的麦克风声源定位语音增强算法。该算法结合了独立分量分析(ICA)和维纳滤波。该算法利用快速独立分量分析算法(FastICA)的负熵提取特征并分离语音信号,然后在ICA域中使用维纳滤波最小化估计信号与特征提取的语音信号之间的均方误差。本文详细推导了ICA变换的解混矩阵,并通过Matlab仿真了该算法的语音增强能力。仿真结果表明,该算法具有明显的增强效果,能够有效地降低噪声。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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