移动通信中增强噪声语音和提高可理解度的倒谱域方法

.. Purushotham, .. Suresh
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摘要

大多数新一代手机都配备了智能和独特的功能,提供了很好的音乐体验,互联网,拍摄视频和更多的应用程序。但是,当周围环境过于嘈杂时,语音通信就无法实现同样的体验。因此,开发处理复杂语音的算法对于快速准确地估计语音信号是非常必要的。该技术要求对语音信号进行数字处理,提取特征,去除不需要的噪声源。本文对退化信号在通过Mel滤波器组前进行预处理,进一步求出Mel频率倒谱系数并进行特征提取。由于语音信号具有时间速率变化的特点,在特征匹配中采用了自适应均衡技术。本文的测试模式将语音索引提高了20-30%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cepstral Domain Approach To Enhance Noisy Speech and Increase Intelligibility for Mobile Communication
Most of the new generation mobile phones are equipped with smart and unique features that provide a great experience in music, internet, capturing videos and many more applications. But the same experience is not achieved in voice communication when the surrounding environment is too noisy. Hence development of algorithms for processing complex voice is very much essential for speedy and correct estimation of speech signals. This skill, demand processing of voice signal digitally for feature extraction and remove the undesired noise sources. In this paper, the degraded signal is pre processed before passing through Mel-filter bank further Mel frequency Cepstral coefficients are found and feature extraction is carried out. Since the voice signals tend to have variation in temporal rate, adaptive equalization is used for feature matching techniques. The test pattern in this paper presents an improvement in speech index by a factor of 20-30%.
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