Division of Speech and Hearing Sciences, Prince Philip Dental Hospital, The University of Hong Kong, 34 Hospital Road, Hong Kong.
J Acoust Soc Am. 2013 May;133(5):EL405-11. doi: 10.1121/1.4800189.
In this study, two methods are proposed to modify the normalized covariance metric (NCM) measure to reduce the effects of gain-induced nonlinear distortions introduced by most noise-suppression algorithms. Considering that the gain-induced distortions behave differently dependent on the signal-to-noise ratio between the noise-reduced speech and the noise, the first approach introduces a penalty factor involving this ratio in the modified NCM measure. The second approach deemphasizes segments marked with amplification distortions that contribute less to intelligibility via adaptive thresholding. Significantly higher correlations with intelligibility scores were obtained from the modified NCM measures compared with the original NCM measures.
在这项研究中,提出了两种方法来修改归一化协方差度量(NCM),以减少大多数降噪算法引入的增益引起的非线性失真的影响。考虑到增益引起的失真行为因降噪语音与噪声之间的信噪比而异,第一种方法在修改后的 NCM 度量中引入了一个涉及该比的惩罚因子。第二种方法通过自适应阈值处理,降低对可懂度贡献较小的放大失真标记的段的重要性。与原始 NCM 度量相比,改进后的 NCM 度量与可懂度得分的相关性显著提高。