Discretization and Re-synthesis: an alternative method to solve the Cocktail Party Problem

12/17/2021
by   Jing Shi, et al.
0

Deep learning based models have significantly improved the performance of speech separation with input mixtures like the cocktail party. Prominent methods (e.g., frequency-domain and time-domain speech separation) usually build regression models to predict the ground-truth speech from the mixture, using the masking-based design and the signal-level loss criterion (e.g., MSE or SI-SNR). This study demonstrates, for the first time, that the synthesis-based approach can also perform well on this problem, with great flexibility and strong potential. Specifically, we propose a novel speech separation/enhancement model based on the recognition of discrete symbols, and convert the paradigm of the speech separation/enhancement related tasks from regression to classification. By utilizing the synthesis model with the input of discrete symbols, after the prediction of discrete symbol sequence, each target speech could be re-synthesized. Evaluation results based on the WSJ0-2mix and VCTK-noisy corpora in various settings show that our proposed method can steadily synthesize the separated speech with high speech quality and without any interference, which is difficult to avoid in regression-based methods. In addition, with negligible loss of listening quality, the speaker conversion of enhanced/separated speech could be easily realized through our method.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/08/2019

Parrotron: An End-to-End Speech-to-Speech Conversion Model and its Applications to Hearing-Impaired Speech and Speech Separation

We describe Parrotron, an end-to-end-trained speech-to-speech conversion...
research
11/15/2022

Reverberation as Supervision for Speech Separation

This paper proposes reverberation as supervision (RAS), a novel unsuperv...
research
03/17/2020

Deep Attention Fusion Feature for Speech Separation with End-to-End Post-filter Method

In this paper, we propose an end-to-end post-filter method with deep att...
research
10/20/2021

Time-Domain Mapping Based Single-Channel Speech Separation With Hierarchical Constraint Training

Single-channel speech separation is required for multi-speaker speech re...
research
07/01/2016

Permutation Invariant Training of Deep Models for Speaker-Independent Multi-talker Speech Separation

We propose a novel deep learning model, which supports permutation invar...
research
04/14/2020

Two-stage model and optimal SI-SNR for monaural multi-speaker speech separation in noisy environment

In daily listening environments, speech is always distorted by backgroun...
research
03/20/2015

Deep Transform: Cocktail Party Source Separation via Probabilistic Re-Synthesis

In cocktail party listening scenarios, the human brain is able to separa...

Please sign up or login with your details

Forgot password? Click here to reset