Evaluation of the effects of speech enhancement algorithms on the detection of fundamental frequency of speech

N. García, J. C. Vásquez-Correa, J. Vargas-Bonilla, J. D. Arias-Londoño, J. Orozco-Arroyave
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Abstract

The estimation of the fundamental frequency (F0) in speech is a very important task that has been addressed by many researchers. F0 estimation can be used to separate two kind of frames from an utterance, those where the vocal folds vibrate (voiced sounds) and those where not (unvoiced sounds). The methods used to estimate F0 are affected by the presence of additive noise in recordings made in non-controlled environments, however, there are different techniques to mitigate the effect of such noise and Speech Enhancement (SE) has proven to be one of the most effective ones. This article presents results of the evaluation of the effects of noise and SE algorithms on the detection of F0 and the signal segmentation in voiced/unvoiced segments. We performed experiments with signals artificially contaminated with two different kinds of noise, White Gaussian Noise (WGN) and background noise recorded at a cafeteria (Cafeteria babble), subsequently, the signals are processed with SE algorithms of four different classes: Wiener Filter, Spectral Subtraction, Statistical-Model Based and Sub-space algorithms. Two different kind of error metrics are considered: Gross Pitch Error and Voicing Determination Error. The results show that only the sub-space approach improves the performance in the detection of F0 and the signal segmentation in voiced/unvoicd segments.
评价语音增强算法对语音基频检测的影响
语音中基频的估计是一个非常重要的问题,一直受到许多研究者的关注。F0估计可用于从话语中分离两种帧,即声带振动的帧(浊音)和不振动的帧(浊音)。用于估计F0的方法受到在非受控环境中录制的录音中存在的附加噪声的影响,然而,有不同的技术来减轻这种噪声的影响,语音增强(SE)已被证明是最有效的方法之一。本文介绍了噪声和SE算法对F0检测和浊音/非浊音段信号分割的影响的评估结果。本研究以人工污染了高斯白噪声(WGN)和自助餐厅(自助餐厅)背景噪声的信号为实验对象,采用维纳滤波、谱减法、基于统计模型和子空间算法四种不同类型的SE算法对信号进行处理。考虑了两种不同的误差度量:总音高误差和声音确定误差。结果表明,只有子空间方法才能提高F0检测和浊音/不浊音段信号分割的性能。
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