This paper presents a new probabilistic formulation of linear predic-tion (LP) for jointly estimating the spectral envelope and fundamen-tal frequency (F0) of a speech signal. Amain problem of classical LP is that the peaks of the estimated envelope are highly biased toward the harmonic partials of a speech spectrum. To solve this problem, we propose a nonparametric Bayesian model called infinite kernel linear prediction (IKLP) based on a Gaussian process with multiple kernel learning. Our model can represent the periodicity of a speech signal by using a weighted sum of infinitely many periodic kernels that correspond to different F0s. We put a gamma process prior on the positive weights of those kernels and perform sparse learning to deter...
The quality of recorded speech signals can be substantially affected by room reverberation. In this ...
A frequency domain technique is presented to be used in speech coding to improve the performance of ...
Accepted to the Thirty-sixth International Conference on Machine Learning (ICML) 2019Accepted to the...
This paper presents a new probabilistic formulation of linear predic-tion (LP) for jointly estimatin...
We develop Bayesian learning algorithms for estimation of time-varying linear prediction (TVLP) coef...
Abstract—Although considerable effort has been devoted to both fundamental frequency and spectral ...
We consider the joint estimation of time-varying linear prediction (TVLP) filter coefficients and th...
Feature extraction of speech signals is typically performed in short-time frames by assuming that th...
Linear prediction (LP) provides a robust, reliable and accurate method for estimating the param...
Abstract—Linear prediction is one of the most established techniques in signal estimation, and it is...
This paper presents a speech enhancement method based on the tracking and denoising of the formants ...
An analytic signal s(t) is modeled over a T second duration by a pole- zero model by considering its...
The goal of this thesis is to modify the traditional linear prediction (LP) analysis in such way tha...
In this paper we present first experimental results with a novel audio coding technique based on app...
Autoregressive modeling is applied for approximating the temporal evolution of spectral density in c...
The quality of recorded speech signals can be substantially affected by room reverberation. In this ...
A frequency domain technique is presented to be used in speech coding to improve the performance of ...
Accepted to the Thirty-sixth International Conference on Machine Learning (ICML) 2019Accepted to the...
This paper presents a new probabilistic formulation of linear predic-tion (LP) for jointly estimatin...
We develop Bayesian learning algorithms for estimation of time-varying linear prediction (TVLP) coef...
Abstract—Although considerable effort has been devoted to both fundamental frequency and spectral ...
We consider the joint estimation of time-varying linear prediction (TVLP) filter coefficients and th...
Feature extraction of speech signals is typically performed in short-time frames by assuming that th...
Linear prediction (LP) provides a robust, reliable and accurate method for estimating the param...
Abstract—Linear prediction is one of the most established techniques in signal estimation, and it is...
This paper presents a speech enhancement method based on the tracking and denoising of the formants ...
An analytic signal s(t) is modeled over a T second duration by a pole- zero model by considering its...
The goal of this thesis is to modify the traditional linear prediction (LP) analysis in such way tha...
In this paper we present first experimental results with a novel audio coding technique based on app...
Autoregressive modeling is applied for approximating the temporal evolution of spectral density in c...
The quality of recorded speech signals can be substantially affected by room reverberation. In this ...
A frequency domain technique is presented to be used in speech coding to improve the performance of ...
Accepted to the Thirty-sixth International Conference on Machine Learning (ICML) 2019Accepted to the...