Analysis of Adaptive Filter Algorithms in Real Time Signals

S. Kalaivani, G. Geetha, S.M. Mufliha Banu, S. Sowjanya, R. Vishali, C. Tharini
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Abstract

Noise reduction in Real time signal is a key challenge in Communication system. Active noise cancelling technique is used to minimize the distracting background noise from the real-time signal and to provide pleasant voice during communication in portable devices. Active Noise Cancellation is a technique of reducing unwanted sound by generating the anti-noise signal. The anti-noise signal is generated by using algorithms like Least Mean Square Algorithm (LMS), Normalized Least Mean Square Algorithm (NLMS), and Filtered X Least Mean Square Algorithm (FXLMS) for developing the ANC system. The generated anti-noise helps to reduce the distracting background noise and provides noise free desired signal output. In the proposed work anti-noise is generated for various real-time recorded noise signals like crow noise, train whistle noise, AC noise and multiple noises obtained as the combination of two noises using LMS, NLMS and FXLMS algorithm. The anti-noise signal generated is then used to cancel the respective noise added with the different input signals. The input signals considered are sine signal, real-time voice and song. Performance analysis of the algorithms is carried out based on the parameters like RMSE, SNR, and convergence time using MATLAB simulation software.
实时信号中的自适应滤波算法分析
实时信号的降噪是通信系统中的一个关键问题。主动降噪技术是为了减少背景噪声对实时信号的干扰,并在便携式设备的通信过程中提供令人愉快的语音。主动降噪是一种通过产生抗噪声信号来减少不需要的声音的技术。采用最小均方算法(LMS)、归一化最小均方算法(NLMS)和滤波X最小均方算法(FXLMS)等算法生成抗噪信号。产生的抗噪声有助于减少分散的背景噪声,并提供无噪声的期望信号输出。本文采用LMS、NLMS和FXLMS算法对实时记录的各种噪声信号,如乌鸦噪声、火车鸣笛声噪声、交流噪声以及两种噪声组合而成的多重噪声产生抗噪声。然后使用所产生的抗噪声信号来抵消不同输入信号所加的相应噪声。考虑的输入信号有正弦信号、实时语音和歌曲。基于RMSE、SNR、收敛时间等参数,利用MATLAB仿真软件对算法进行性能分析。
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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