학술논문

Low-complexity artificial noise suppression methods for deep learning-based speech enhancement algorithms
Document Type
article
Source
EURASIP Journal on Audio, Speech, and Music Processing, Vol 2021, Iss 1, Pp 1-15 (2021)
Subject
Speech enhancement
Artificial residual noise
Postprocessing scheme
Acoustics. Sound
QC221-246
Electronic computers. Computer science
QA75.5-76.95
Language
English
ISSN
1687-4722
Abstract
Abstract Deep learning-based speech enhancement algorithms have shown their powerful ability in removing both stationary and non-stationary noise components from noisy speech observations. But they often introduce artificial residual noise, especially when the training target does not contain the phase information, e.g., ideal ratio mask, or the clean speech magnitude and its variations. It is well-known that once the power of the residual noise components exceeds the noise masking threshold of the human auditory system, the perceptual speech quality may degrade. One intuitive way is to further suppress the residual noise components by a postprocessing scheme. However, the highly non-stationary nature of this kind of residual noise makes the noise power spectral density (PSD) estimation a challenging problem. To solve this problem, the paper proposes three strategies to estimate the noise PSD frame by frame, and then the residual noise can be removed effectively by applying a gain function based on the decision-directed approach. The objective measurement results show that the proposed postfiltering strategies outperform the conventional postfilter in terms of segmental signal-to-noise ratio (SNR) as well as speech quality improvement. Moreover, the AB subjective listening test shows that the preference percentages of the proposed strategies are over 60%.