Speech enhancement schemes rely generally on the knowledge of the noise power spectral density. The estimation of these statistics is particularly a critical issue and a challenging problem under non-stationary noise conditions. With this respect, subspace based approaches have shown to allow for reduced estimation delay and perform a good tracking vs. final misadjustment tradeoff. One key attribute for noise floor tracking is the estimation bias: an overestimation leads to over-suppression and to more speech distortion; while an underestimation leads to a high level of residual noise. The present paper investigates the bias of the subspace-based scheme, and particularly the robustness of the bias compensation factor to the desired speaker characteristics and the input SNR.
Cite as: Triki, M., Janse, K. (2010) Bias considerations for minimum subspace noise tracking. Proc. Interspeech 2010, 1093-1096, doi: 10.21437/Interspeech.2010-349
@inproceedings{triki10b_interspeech, author={Mahdi Triki and Kees Janse}, title={{Bias considerations for minimum subspace noise tracking}}, year=2010, booktitle={Proc. Interspeech 2010}, pages={1093--1096}, doi={10.21437/Interspeech.2010-349} }