A Distributed Speech Algorithm for Large Scale Data Communication Systems

N. Xiong, Guoxiang Tong, Wenzhong Guo, Jian Tan, Guanning Wu
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Abstract

Data-driven computing and using data for strategic advantages are exemplified by communication systems, and the speech intelligibility in communication systems is generally interrupted by interfering noise. This interference comes from the environmental noise, so we can reduce them intelligibility by masking the interested signal [1, 2]. An important work in communication systems is to extract speech from noisy speech and inhibiting background noise. In this paper, the subspace algorithm theory is introduced into a speech noise reduction system. We first analyze the principle of LMS adaptive speech noise reduction algorithm with the subspace algorithm, and then, we merge the subspace algorithm into the VS-LMS algorithm and propose a combined algorithm for an adaptive speech noise reduction system. Furthermore, we analyze the combined algorithm, which can decrease musical noise, as well as generate a suitable step-size factor to resolve the contradiction. This issue cannot be resolved by the current LMS algorithm [31], which has less convergence speed and larger residual noise than our system. Our simulation results demonstrate that our algorithm can get 3 to 10 times better than original algorithm in low SNR (-5 0db) and high SNR (0 ~ +5db).
面向大规模数据通信系统的分布式语音算法
数据驱动计算和利用数据获得战略优势的例子是通信系统,而通信系统中的语音可理解性通常受到干扰噪声的干扰。这种干扰来自于环境噪声,因此我们可以通过屏蔽感兴趣的信号来降低它们的可理解性[1,2]。从噪声语音中提取语音并抑制背景噪声是通信系统的一项重要工作。将子空间算法理论引入到语音降噪系统中。首先分析了LMS自适应语音降噪算法与子空间算法的原理,然后将子空间算法与VS-LMS算法合并,提出了一种自适应语音降噪系统的组合算法。在此基础上,分析了该组合算法在降低音乐噪声的同时,产生合适的步长因子来解决矛盾。目前的LMS算法[31]无法解决这一问题,与我们的系统相比,LMS算法收敛速度更慢,残余噪声更大。仿真结果表明,在低信噪比(- 50db)和高信噪比(0 ~ +5db)下,该算法的性能是原算法的3 ~ 10倍。
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