High-frequency Noise Removal of Audio Files using Daubechies Wavelet Transform

N. K. Kularathne, M. M. P. M. Fernando, J. M. U. T. D. Jayasinghe
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Abstract

In general, audio signals are contaminated with various types of noise. This paper presents a novel signal processing method developed for high-frequency noise elimination using wavelet transforms. As a continuation of a previous study that used Fourier transform for noise removal in audio files, in this study Daubechies wavelets were used to reduce computational complexity and achieve better noise reduction performances. Compared to the Fourier transform, the Daubechies wavelet transform method removes the noise in each signal while preserving its vital characteristics. The suitable level of the Daubechies wavelet for noise removal in each channel was obtained using a trial-and-error approach. It was identified that the ideal range for the level of the Daubechies wavelets for noise removal is between 17 and 20. Moreover, unlike the Fourier transform, the Daubechies wavelet transform demonstrates a proficient capacity in eliminating noise from data point that lies completely outside the rest in the audio data set. Wolfram Mathematica 12.3 software package was used to complete this research. This method can be applied toconserve vintage audio recordings originally recorded in cassettes and spools. Keywords: Digital Signal Processing, Wavelet Transforms, Daubechies Wavelet Transform, Fourier Transforms, Noise Removal
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利用道布奇斯小波变换去除音频文件中的高频噪声
一般来说,音频信号会受到各种噪声的污染。本文介绍了一种利用小波变换消除高频噪声的新型信号处理方法。作为之前使用傅立叶变换消除音频文件中噪声研究的延续,本研究使用了道贝歇小波,以降低计算复杂度并实现更好的降噪性能。与傅立叶变换相比,道贝歇小波变换方法在去除每个信号中的噪声的同时,还保留了其重要特征。通过试错法获得了适合去除各信道噪声的道别奇斯小波电平。结果表明,用于去除噪声的 Daubechies 小波电平的理想范围在 17 到 20 之间。此外,与傅立叶变换不同,道贝歇斯小波变换在消除音频数据集中完全不属于其他数据点的噪声方面表现出了卓越的能力。本研究使用了 Wolfram Mathematica 12.3 软件包。这种方法可用于保存最初录制在磁带和线轴中的老式音频录音。 关键词数字信号处理、小波变换、道别奇斯小波变换、傅里叶变换、噪声去除
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