The Fourier analysis plays a key role in speech signal processing. As a complex quantity, it can be expressed in the polar form using the magnitude and phase spectra. The magnitude spectrum is widely used in almost every corner of speech processing. However, the phase spectrum is not an obviously appealing start point for processing the speech signal. In contrast to the magnitude spectrum whose fine and coarse structures have a clear relation to speech perception, the phase spectrum is difficult to interpret and manipulate. In fact, there is not a meaningful trend or extrema which may facilitate the modelling process. Nonetheless, the speech phase spectrum has recently gained renewed attention. An expanding body of work is showing that it ...
Common speech enhancement methods based on the short-time Fourier analysis–modification–synthesis (A...
This paper presents a new front-end for robust speech recognition. This new front-end scenario focus...
Model-based techniques for robust speech recognition often require the statistics of noisy speech. I...
In earlier work we proposed a framework for speech source-filter separation that employs phase-based...
Deconvolution of the speech excitation (source) and vocal tract (filter) components through log-mag...
In earlier work we have proposed a source-filter decomposition of speech through phase-based process...
© 2018 International Speech Communication Association. All rights reserved. Most frequency domain te...
The phase spectrum of Fourier transform has received lesser prominence than its magnitude counterpar...
In this paper we propose a new method for utilising phase information by complementing it with tradi...
With the fast growing of deep neural network models, more and more tasks have been boosted when move...
We present a speech enhancement algorithm that performs modulation-domain Kalman filtering to track ...
This letter presents a novel method to estimate the clean speech phase spectrum, given the noisy spe...
This work investigates the application of spectral and temporal speech processing algorithms develop...
Abstract—Many short-time Fourier transform (STFT) based single-channel speech enhancement algorithms...
This paper proposes features based on parametric representa-tion of Fourier phase of speech for s...
Common speech enhancement methods based on the short-time Fourier analysis–modification–synthesis (A...
This paper presents a new front-end for robust speech recognition. This new front-end scenario focus...
Model-based techniques for robust speech recognition often require the statistics of noisy speech. I...
In earlier work we proposed a framework for speech source-filter separation that employs phase-based...
Deconvolution of the speech excitation (source) and vocal tract (filter) components through log-mag...
In earlier work we have proposed a source-filter decomposition of speech through phase-based process...
© 2018 International Speech Communication Association. All rights reserved. Most frequency domain te...
The phase spectrum of Fourier transform has received lesser prominence than its magnitude counterpar...
In this paper we propose a new method for utilising phase information by complementing it with tradi...
With the fast growing of deep neural network models, more and more tasks have been boosted when move...
We present a speech enhancement algorithm that performs modulation-domain Kalman filtering to track ...
This letter presents a novel method to estimate the clean speech phase spectrum, given the noisy spe...
This work investigates the application of spectral and temporal speech processing algorithms develop...
Abstract—Many short-time Fourier transform (STFT) based single-channel speech enhancement algorithms...
This paper proposes features based on parametric representa-tion of Fourier phase of speech for s...
Common speech enhancement methods based on the short-time Fourier analysis–modification–synthesis (A...
This paper presents a new front-end for robust speech recognition. This new front-end scenario focus...
Model-based techniques for robust speech recognition often require the statistics of noisy speech. I...