Adaptively compensated multiband spectral subtraction for robust noise reduction

B. Rohman, C. Wael, K. Paramayudha
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引用次数: 1

Abstract

An adaptively compensated multiband spectral subtraction (MBSS) is presented in this paper. In this research, the adaptive compensation in the MBSS utilizes artificial neural network. The purpose of this compensation is to improve the quality of speech signal after denoising of MBSS step. This compensation is calculated adaptively depend on the MBSS parameters, estimated noise, and difference between input and estimated speech signal. The neural network used was Multi-Layer Perceptron consisted of three hidden layers. The proposed neural network was trained by three speech signals contaminated by white gaussian noises with SNR 0dB and 30dB. For investigating the performance, the proposed method was tested by five noised speech signals with SNR 0dB to 10dB. The result of experiment is examined and evaluated by SNR and PESQ scores. Based on the examination, the proposed speech enhancement method exposed the better performance than the origin MBSS algorithm.
自适应补偿多波段谱减法鲁棒降噪
提出了一种自适应补偿多波段谱减法(MBSS)。在本研究中,MBSS中的自适应补偿采用了人工神经网络。这种补偿的目的是为了提高MBSS去噪后的语音信号质量。该补偿根据MBSS参数、估计噪声以及输入和估计语音信号之间的差值自适应计算。使用的神经网络是多层感知器,由三个隐藏层组成。采用信噪比分别为0dB和30dB的三种高斯白噪声语音信号对神经网络进行训练。为了研究该方法的性能,对5个信噪比为0dB ~ 10dB的语音信号进行了测试。用信噪比和PESQ分数对实验结果进行检验和评价。实验结果表明,本文提出的语音增强方法比原MBSS算法具有更好的性能。
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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