Single-Channel Speech Separation Based on Gaussian Process Regression

Autor: Jia-Ching Wang, Nguyen Le, Sih-Huei Chen, Tzu-Chiang Tai
Rok vydání: 2018
Předmět:
Zdroj: ISM
DOI: 10.1109/ism.2018.00040
Popis: Gaussian process (GP) is a flexible kernel-based learning method which has found widespread applications in signal processing. In this paper, a supervised approach is proposed to handle single-channel speech separation (SCSS) problem. We focus on modeling a nonlinear mapping between mixed and clean speeches based on GP regression, in which reconstructed audio signal is estimated by the predictive mean of GP model. The nonlinear conjugate gradient method was utilized to perform the hyper-parameter optimization. The experiment on a subset of TIMIT speech dataset is carried out to confirm the validity of the proposed approach.
Databáze: OpenAIRE