基于优化离散小波变换的自适应相干函数的自动双通道语音增强

V. Tank, S. Mahajan
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引用次数: 0

摘要

语音质量增强是任何语音通信模型的重要方法。语音增强(SE)和降噪方法可以显著改善免提通信系统的感知语音质量,提高自动语音识别系统的识别率。在现实世界中,语音通信需要高性能的增强技术来处理失真,这些失真会破坏语音信号的可理解性和质量。最近的便携式设备通常包含几个麦克风,可以很容易地用于提高信号质量。本文拟利用相干函数和启发式概念提出一种新的双通道SE模型。自适应相干函数涉及适用于具有主麦克风和参考麦克风的智能手机的双麦克风SE方法。利用改进后的信号,采用基于自适应风速的猎鹿优化算法(AWS-DHOA)对离散小波变换(DWT)进行优化去噪,从而增强信号。考虑的目标函数依赖于被称为语音质量感知评价(PESQ)分数的质量度量。结果表明,在考虑噪声的情况下,基于AWS-DHOA的模型的RMSE分别比GWO-CFD、WOA-CFD、CSA-CFD和RDA-CFD的RMSE小39.8%、45.5%、53.8%和45.5%。最后,通过对不同噪声类型下不同算法的对比分析,验证了所提方法在提高语音质量和可理解性方面的效果。
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Automated Dual-Channel Speech Enhancement Using Adaptive Coherence Function with Optimised Discrete Wavelet Transform
Voice quality enhancement is a significant method for any speech communication model. Speech Enhancement (SE) and noise reduction approaches can significantly improve the perceptual voice quality of a hands-free communication system and increase the recognition rates of automatic speech recognition systems. Speech communications in real-world cases require high-performance enhancement techniques for addressing the distortions, which can corrupt the intelligibility and quality of the speech signal. Recent portable devices generally incorporate several microphones that can be easily used for improving signal quality. This paper plans to present a novel dual-channel SE model using the coherence function and heuristic concepts. The adaptive coherence function relates to the dual-microphone SE approach suitable for smartphones with primary and reference microphones. With this improved signal, the enhancement is performed by optimising denoising using Discrete Wavelet Transform (DWT) by Adaptive wind speed-based Deer Hunting Optimization Algorithm (AWS-DHOA). The considered objective function depends on the quality measure called Perceptual Evaluation of Speech Quality (PESQ) score. From the results, the RMSE of the proposed model using AWS-DHOA is 39.8%, 45.5%, 53.8% and 45.5% minimised than GWO-CFD, WOA-CFD, CSA-CFD, and RDA-CFD, respectively, on considering the babble noise. Finally, the comparative analysis confirmed that the proposed method improves speech quality and intelligibility by comparing diverse algorithms when different noise types corrupt the speech.
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