In this paper, we use unconstrained frequency estimates (UFEs) from a noisy harmonic signal and propose two methods to estimate and track the pitch over time. We assume that the UFEs are multivariate-normally-distributed random variables, and derive a maximum likelihood (ML) pitch estimator by maximizing the likelihood of the UFEs over short time-intervals. As the main contribution of this paper, we propose two state-space representations to model the pitch continuity, and, accordingly, we propose two Bayesian methods, namely a hidden Markov model and a Kalman filter. These methods are designed to optimally use the correlations in the consecutive pitch values, where the past pitch estimates are used to recursively update the prior distribut...
We describe an algorithm to accurately estimate the fundamental frequency of harmonic sinusoids in a...
Abstract In this paper, a new spectral/temporal method is described for robust pitch tracking for bo...
International audienceThis paper addresses the problem of multi-pitch estimation, which consists in ...
Fundamental frequency is one of the most important characteristics of speech and audio signals. Harm...
In many scenarios, a periodic signal of interest is often contaminated by different types of noise t...
In this paper, we consider the problem of multi-pitch estimation and tracking of an unknown number o...
Modern speech processing applications require operation on signal of interest that is contaminated b...
Periodic signals can be decomposed into sets of sinusoids having frequencies that are integer multip...
The major objective of this research is to develop novel pitch estimation methods capable of handlin...
Estimating the pitch of musical signals is complicated by the pres-ence of partials in addition to t...
A method for pitch detection which models the temporal evolution of musical sounds is presented in t...
In this paper, a new method for pitch tracking is presented. The method is comprised of two steps. I...
This thesis considers sparse modeling and estimation of multi-pitch signals, i.e., signals whose fre...
In this paper, a method for multi-channel pitch estimation is proposed. The method is a maximum like...
We present a novel approach to pitch estimation and note detection in polyphonic audio signals. We p...
We describe an algorithm to accurately estimate the fundamental frequency of harmonic sinusoids in a...
Abstract In this paper, a new spectral/temporal method is described for robust pitch tracking for bo...
International audienceThis paper addresses the problem of multi-pitch estimation, which consists in ...
Fundamental frequency is one of the most important characteristics of speech and audio signals. Harm...
In many scenarios, a periodic signal of interest is often contaminated by different types of noise t...
In this paper, we consider the problem of multi-pitch estimation and tracking of an unknown number o...
Modern speech processing applications require operation on signal of interest that is contaminated b...
Periodic signals can be decomposed into sets of sinusoids having frequencies that are integer multip...
The major objective of this research is to develop novel pitch estimation methods capable of handlin...
Estimating the pitch of musical signals is complicated by the pres-ence of partials in addition to t...
A method for pitch detection which models the temporal evolution of musical sounds is presented in t...
In this paper, a new method for pitch tracking is presented. The method is comprised of two steps. I...
This thesis considers sparse modeling and estimation of multi-pitch signals, i.e., signals whose fre...
In this paper, a method for multi-channel pitch estimation is proposed. The method is a maximum like...
We present a novel approach to pitch estimation and note detection in polyphonic audio signals. We p...
We describe an algorithm to accurately estimate the fundamental frequency of harmonic sinusoids in a...
Abstract In this paper, a new spectral/temporal method is described for robust pitch tracking for bo...
International audienceThis paper addresses the problem of multi-pitch estimation, which consists in ...