Department of Speech, Hearing and Phonetic Sciences, University College London, 2 Wakefield Street, London WC1N 1PF, United Kingdom.
J Acoust Soc Am. 2012 Jan;131(1):531-9. doi: 10.1121/1.3665996.
The effects on speech intelligibility of three different noise reduction algorithms (spectral subtraction, minimal mean squared error spectral estimation, and subspace analysis) were evaluated in two types of noise (car and babble) over a 12 dB range of signal-to-noise ratios (SNRs). Results from these listening experiments showed that most algorithms deteriorated intelligibility scores. Modeling of the results with a logit-shaped psychometric function showed that the degradation in intelligibility scores was largely congruent with a constant shift in SNR, although some additional degradation was observed at two SNRs, suggesting a limited interaction between the effects of noise suppression and SNR.
评估了三种不同降噪算法(谱减法、最小均方误差谱估计和子空间分析)在 12dB 信噪比范围内两种噪声(汽车和 babble)下对语音可懂度的影响。这些听力实验的结果表明,大多数算法都会降低可懂度得分。使用对数形心理物理函数对结果进行建模表明,可懂度得分的下降与 SNR 的恒定偏移基本一致,尽管在两个 SNR 下观察到一些额外的下降,这表明噪声抑制和 SNR 之间的相互作用有限。