改进参数的RASTA方法在通信系统语音增强中的评价

Satish K. Shah, J. Shah, N. Parmar
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引用次数: 5

摘要

语音增强技术的目的是在不产生任何伪影的情况下提高语音的质量和可理解性。语音增强算法旨在抑制加性背景噪声和卷积失真或混响。随着移动电话和蜂窝电话的普及,对通信系统中噪声语音增强的需求也在增加。呼叫可能来自嘈杂的环境,如移动的车辆或拥挤的公共场所。破坏性的噪声并不总是白色的,而是有颜色的,并且包含混响。目前通信系统中常用的噪声抑制器都是基于短时频谱衰减(STSA)算法的频谱减法作为语音编码器的预处理器。它们在白噪声环境下表现良好,但在不同信噪比的彩色噪声环境下表现不佳。这导致使用相对频谱(RASTA)算法进行语音增强,该算法最初设计用于减轻自动语音识别(ASR)中卷积和加性噪声的影响。RASTA通过带通滤波在干扰噪声成分为加性的域内语音参数表示的时间轨迹来实现这一点。本文评价了RASTA算法在白噪声和彩色噪声降噪方面的性能,并对参数和滤波方法进行了修改,使其性能优于原来的RASTA算法。NOIZEUS数据库用于在0 ~ 10dB信噪比的不同噪声条件下进行客观评价。这里显示的结果与光谱减法方法相比有了改进。
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Evaluation of RASTA approach with modified parameters for speech enhancement in communication systems
The purpose of speech enhancement techniques is to improve quality and intelligibility of speech without producing any artifact. The speech enhancement algorithms are designed to suppress additive background noise and convolutive distortion or reverberation. The need for enhancement of noisy speech in communication systems increases with the spread of mobile and cellular telephony. Calls may originate from noisy environments such as moving vehicles or crowded public gathering places. The corrupting noise is not always white rather it is colored and contains reverberation. The currently employed noise suppressors in communication systems use spectral subtraction based on short time spectral attenuation (STSA) algorithms as a preprocessor in speech coder. They can perform well in white noise condition but failed in real colored noise environments with different SNRs. This leads to the use of RelAtive SpecTrAl (RASTA) algorithm for speech enhancement which was originally designed to alleviate effects of convolutional and additive noise in automatic speech recognition (ASR). RASTA does this by band-pass filtering time trajectories of parametric representations of speech in the domain in which the disturbing noisy components are additive. This paper evaluates the performance of RASTA algorithm for white and colored noise reduction as well as suggests modifications in parameters and filtering approach to perform quite well than original RASTA approach. The NOIZEUS database is used for objective evaluation in different noise conditions with 0 to 10dB SNRs. The results shown here give improvements compared to spectral subtraction methods.
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