Fundamental frequency is one of the most important characteristics of speech and audio signals. Harmonic model-based fundamental frequency estimators offer a higher estimation accuracy and robustness against noise than the widely used autocorrelation-based methods. However, the traditional harmonic model-based estimators do not take the temporal smoothness of the fundamental frequency, the model order, and the voicing into account as they process each data segment independently. In this paper, a fully Bayesian fundamental frequency tracking algorithm based on the harmonic model and a first-order Markov process model is proposed. Smoothness priors are imposed on the fundamental frequencies, model orders, and voicing using first-order Markov ...
In this paper, we present an algorithm for robustly estimating the fundamental frequency in speech s...
Joint fundamental frequency and model order estimation is an im-portant problem in several applicati...
ICSLP2000: the 6th International Conference on Spoken Language Processing, October 16-20, 2000, Bei...
Fundamental frequency is one of the most important characteristics of speech and audio signals. Harm...
Fundamental frequency is one of the most important characteristics of speech and audio signals. Harm...
Fundamental frequency is one of the most important characteristics of speech and audio signals. Harm...
Fundamental frequency is one of the most important characteristics of speech and audio signals. Harm...
In this paper, we use unconstrained frequency estimates (UFEs) from a noisy harmonic signal and prop...
Fundamental frequency estimation is an important task in speech and audio analysis. Harmonic model-b...
Fundamental frequency estimation is an important task in speech and audio analysis. Harmonic model-b...
Fundamental frequency estimation is an important task in speech and audio analysis. Harmonic model-b...
Fundamental frequency estimation is an important task in speech and audio analysis. Harmonic model-b...
Fundamental frequency estimation is an important task in speech and audio analysis. Harmonic model-b...
Joint fundamental frequency and model order estimation is an important problem in several applicatio...
Modern speech processing applications require operation on signal of interest that is contaminated b...
In this paper, we present an algorithm for robustly estimating the fundamental frequency in speech s...
Joint fundamental frequency and model order estimation is an im-portant problem in several applicati...
ICSLP2000: the 6th International Conference on Spoken Language Processing, October 16-20, 2000, Bei...
Fundamental frequency is one of the most important characteristics of speech and audio signals. Harm...
Fundamental frequency is one of the most important characteristics of speech and audio signals. Harm...
Fundamental frequency is one of the most important characteristics of speech and audio signals. Harm...
Fundamental frequency is one of the most important characteristics of speech and audio signals. Harm...
In this paper, we use unconstrained frequency estimates (UFEs) from a noisy harmonic signal and prop...
Fundamental frequency estimation is an important task in speech and audio analysis. Harmonic model-b...
Fundamental frequency estimation is an important task in speech and audio analysis. Harmonic model-b...
Fundamental frequency estimation is an important task in speech and audio analysis. Harmonic model-b...
Fundamental frequency estimation is an important task in speech and audio analysis. Harmonic model-b...
Fundamental frequency estimation is an important task in speech and audio analysis. Harmonic model-b...
Joint fundamental frequency and model order estimation is an important problem in several applicatio...
Modern speech processing applications require operation on signal of interest that is contaminated b...
In this paper, we present an algorithm for robustly estimating the fundamental frequency in speech s...
Joint fundamental frequency and model order estimation is an im-portant problem in several applicati...
ICSLP2000: the 6th International Conference on Spoken Language Processing, October 16-20, 2000, Bei...