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A Wavelet Based Hybrid Threshold Transform Method for Speech Intelligibility and Quality in Noisy Speech Patterns of English Language

机译:基于小波的混合阈值变换方法,用于语音清晰度与英语语言语音模式

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摘要

The paper proposes a method to improve the performance of speech communication system in a highly noisy industrial environment. For the improvement, different speech signals are considered which includes signals from different environments such as car noise, railway station, babble noise, street noise which are corrupted with additional noise as input data set for processing. This database is processed using suitable filters which will remove the effect of noise to some extent. Different algorithms have been proposed to minimize the effect of noise to a certain limit. The denoising algorithms are generally the different wavelet thresholding method which removes the noise from the speech signal. Many researchers have worked on soft and hard thresholding for image processing. The proposed method of hybrid thresholding comprises of both soft and hard thresholding process which is comparatively better method than the previous methods. The method can be implemented for the non-stationary noise and it also removes the problems of edges. Unlike the traditional way of using single value, different values are used for the adaptive filtering to remove the edges. During the course of experiments, the dataset of IIIT-H with a set of noisy files from Noizeus and AURORA database having sampling rate of 16 kHz has been used. Results are calculated with subjective and objective measures for fine and broad level quality assessment. SNR, SSNR, PSNR, NRMSE, and PESQ parameters are used as performance parameters and outperform with other combinations as compared to conventional methods. The hybrid threshold method yields better results with significant improvement in speech quality and intelligibility.
机译:本文提出了一种提高语音通信系统在高嘈杂的工业环境中的性能的方法。为了改进,考虑了不同的语音信号,其包括来自不同环境的信号,例如汽车噪声,火车站,禁止噪声,街道噪声,街道噪声被丢失,这些噪音被丢失为额外的噪声作为用于处理的输入数据集。使用合适的过滤器处理此数据库,这将在一定程度上消除噪声的效果。已经提出了不同的算法以最小化噪声对一定限度的影响。去噪算法通常是从语音信号中去除噪声的不同小波阈值方法。许多研究人员对图像处理的软和硬阈值进行了工作。所提出的混合阈值方法包括柔软和硬阈值的过程,其比先前方法相对较好。该方法可以为非静止噪声实现,并且还可以消除边缘的问题。与使用单个值的传统方式不同,使用不同的值用于自适应滤波以删除边缘。在实验过程中,已经使用了来自Noizeus的一组噪声文件的IIIT-H数据集和具有16 kHz的采样率的Aurora数据库。结果采用主观和客观措施进行良好和广泛的质量评估。与传统方法相比,SNR,SSNR,PSNR,NRMSE和PESQ参数用作性能参数和与其他组合优于其他组合。混合阈值方法产生更好的结果,具有显着提高语音质量和可懂度。

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