We propose a new method for source separation by synthesizing the source from a speech mixture corrupted by various environmental noise. Unlike traditional source separation methods which estimate the source from the mixture as a replica of the original source (e.g. by solving an inverse problem), our proposed method is a synthesis-based approach which aims to generate a new signal (i.e. “fake” source) that sounds similar to the original source. The proposed system has an encoder-decoder topology, where the encoder predicts intermediate-level features from the mixture, i.e. Mel-spectrum of the target source, using a hybrid recurrent and hourglass network, while the decoder is a state-of-the-art WaveNet speech synthesis network co...
Communication by speech is intrinsic for humans. Since the breakthrough of mobile devices and wirele...
The quality of the vocoder plays a crucial role in the performance of parametric speech synthesis sy...
We present a novel structured variational inference algorithm for probabilistic speech separation. T...
Traditional speech enhancement systems reduce noise by modifying the noisy signal to make it more li...
This thesis explored separating impulse noise from a desired signal, for the purposes of hearing pro...
This paper describes the ability of the Azimuth Discrimination and Resynthesis algorithm (ADRess) to...
Speaker models for blind source separation are typically based on HMMs consisting of vast numbers of...
The ultimate goal of speech synthesis is to build a system that could convert arbitrary written mess...
Abstract—This paper introduces a new approach to dictionary-based source separation employing a lear...
Listening in noise is a challenging problem that affects the hearing capability of not only normal h...
In this paper we examine a method for separating out the vocal-tract filter response from the voice ...
Traditional source-filter model has obvious limitation for speech synthesis in pitch modification du...
A brief introduction to a proposed project on integrating different source separation techniques to ...
All Statistical Parametric Speech Synthesizers consist of a linear pipeline of components. This view...
This thesis is related to the field of Sound Source Separation (SSS). It addresses the development a...
Communication by speech is intrinsic for humans. Since the breakthrough of mobile devices and wirele...
The quality of the vocoder plays a crucial role in the performance of parametric speech synthesis sy...
We present a novel structured variational inference algorithm for probabilistic speech separation. T...
Traditional speech enhancement systems reduce noise by modifying the noisy signal to make it more li...
This thesis explored separating impulse noise from a desired signal, for the purposes of hearing pro...
This paper describes the ability of the Azimuth Discrimination and Resynthesis algorithm (ADRess) to...
Speaker models for blind source separation are typically based on HMMs consisting of vast numbers of...
The ultimate goal of speech synthesis is to build a system that could convert arbitrary written mess...
Abstract—This paper introduces a new approach to dictionary-based source separation employing a lear...
Listening in noise is a challenging problem that affects the hearing capability of not only normal h...
In this paper we examine a method for separating out the vocal-tract filter response from the voice ...
Traditional source-filter model has obvious limitation for speech synthesis in pitch modification du...
A brief introduction to a proposed project on integrating different source separation techniques to ...
All Statistical Parametric Speech Synthesizers consist of a linear pipeline of components. This view...
This thesis is related to the field of Sound Source Separation (SSS). It addresses the development a...
Communication by speech is intrinsic for humans. Since the breakthrough of mobile devices and wirele...
The quality of the vocoder plays a crucial role in the performance of parametric speech synthesis sy...
We present a novel structured variational inference algorithm for probabilistic speech separation. T...