Hybrid Noise Reduction And Enhancement of Audio Quality using Deep Learning

Libina M, Mahan K
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Abstract

Good voice communication has become a top requirement in today’s rapidly growing world. Noise from the surroundings affects the quality of voice and audio signals in acoustic applications. The original voice signal that was broadcast can occasionally no longer be recovered. Acoustic Noise Cancellation (ANC) is a method for improving the quality of speech and audio signals by removing noise in the voice signal. The adaptive filter, a crucial component of the ANC, reduces noise without first knowing the difference between the signal and the noise. Conventional filters would cause the desired voice stream to be distorted. So, when speech and noise signals are random, adaptive filters are appropriate. A primary input with a damaged signal and a reference input with noise that is unknowably associated with the noise in the primary input make up the ANC’s two inputs. The reference input is adaptively filtered and subtracted from the primary input to get the clean speech signal estimation. The performance of the LMS and NLMS algorithms is significantly impacted by the step size and filter length M. Smaller mean square errors lead to longer convergence times (MSE). When it is large, the algorithm diverges, which reduces the adaptive filter’s efficacy. The trade-off between convergence time and MSE must thus be balanced when deciding on a step size, which is a difficult problem. Another practical difficulty is presented by selecting the filter’s tap length M. As filter length M rises, so do the filter’s convergence time and MSE. Consequently, a shorter-length filter is required. Unfortunately, deciding on the number of filter taps is mostly a matter of experience and trial and error. In LMS and NLMS algorithms, it can be challenging to choose the step size of the algorithm and the length of the adaptive filter M to provide the most excellent possible noise cancellation.
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使用深度学习的混合降噪和增强音频质量
在快速发展的今天,良好的语音通信已经成为人们的首要要求。在声学应用中,来自周围环境的噪声会影响语音和音频信号的质量。播出的原始语音信号有时无法再恢复。声学降噪(ANC)是一种通过去除语音信号中的噪声来提高语音和音频信号质量的方法。自适应滤波器是ANC的一个重要组成部分,它可以在不首先知道信号和噪声之间的区别的情况下降低噪声。传统的滤波器会导致期望的语音流失真。因此,当语音和噪声信号是随机的,自适应滤波器是合适的。带有损坏信号的主输入和带有噪声的参考输入组成了ANC的两个输入,这些噪声与主输入中的噪声有不可知的关联。对参考输入进行自适应滤波,并与主输入相减,得到干净的语音信号估计。LMS和NLMS算法的性能受到步长和滤波器长度m的显著影响。均方误差越小,收敛时间越长。当它较大时,算法会发散,降低自适应滤波器的有效性。因此,在决定步长时必须平衡收敛时间和MSE之间的权衡,这是一个难题。另一个实际难点是滤波器分接长度M的选择。随着滤波器长度M的增大,滤波器的收敛时间和均方差也会增大。因此,需要一个较短长度的过滤器。不幸的是,决定过滤器水龙头的数量主要是经验和试验和错误的问题。在LMS和NLMS算法中,选择算法的步长和自适应滤波器M的长度以提供最佳的噪声消除可能是具有挑战性的。
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