1 research outputs found
Blind Speech Deconvolution via Pretrained Polynomial Dictionary and Sparse Representation. 18th Pacific-Rim Conference on Multimedia, Harbin, China, September 28-29, 2017
Blind speech deconvolution aims to estimate both the source
speech and acoustic channel from the convolutive reverberant speech.
The problem is ill-posed and underdetermined, which often requires prior knowledge for the estimation of the source and channel. In this paper, we propose a blind speech deconvolution method via a pretrained polynomial dictionary and sparse representation. A polynomial dictionary
learning technique is employed to learn the dictionary from room impulse responses, which is then used as prior information to estimate the
source and the acoustic impulse responses via an alternating optimization strategy. Simulations are provided to demonstrate the performance
of the proposed method