Implementation of Audio Signals Denoising for Perfect Speech-to-Speech Translation Using Principal Component Analysis

O. Julius, I. Obagbuwa, A. Adebiyi, Esiefarienrhe B. Michael
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引用次数: 1

Abstract

The accuracy of any speech translation system essentially depends on the quality of the audio signal inputted into it. Many researchers have worked on different approaches in an attempt to reduce the level of noise in audio signals. Such approaches, among others, include Wavelet, Fourier Transform (FT), and deep learning. These algorithms worked well on noisy speech to a certain degree, but their degree of accuracy is not sufficient enough for speech-to-speech (S2S) translation because the presence of just a little noise in the signal can alter the semantic representation of the underlying language. Since it is nearly impossible for any of this single algorithm to produce a perfect (noiseless) signal, this paper presents a layered approach for total noise removal by stacking Principal Component Analysis (PCA) on Short Time Fourier Transform (STFT). In this approach, a band-pass channel is created using STFT, which reduces the signal noise level to the barest minimum while the residual noise is completely removed by performing PCA on the refined signals. Experimental results clearly showed that this approach almost doubles the signal-to-noise ratio (SNR) of the output signal for all the 10 audio samples being tested, thus making it relatively than the aforementioned approaches in terms of quality of outputs, and suitable for accuracy-sensitive domains such as speech-to-speech translation system development.
基于主成分分析的语音信号去噪实现语音到语音的完美翻译
任何语音翻译系统的准确性本质上取决于输入的音频信号的质量。许多研究人员研究了不同的方法,试图降低音频信号中的噪音水平。这些方法包括小波、傅立叶变换(FT)和深度学习。这些算法在一定程度上可以很好地处理有噪声的语音,但它们的准确度不足以用于语音到语音(S2S)的翻译,因为信号中只要有一点点噪声就会改变底层语言的语义表示。由于这种单一算法几乎不可能产生完美的(无噪声)信号,因此本文提出了一种分层方法,通过在短时傅里叶变换(STFT)上叠加主成分分析(PCA)来去除全噪声。在这种方法中,使用STFT创建带通通道,将信号噪声水平降低到最低,同时通过对精炼信号执行PCA完全去除残余噪声。实验结果清楚地表明,该方法对所有10个被测音频样本的输出信号的信噪比(SNR)几乎提高了一倍,因此在输出质量方面相对于上述方法,适用于精度敏感的领域,如语音到语音翻译系统的开发。
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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