Fundamental frequency estimation is an important task in speech and audio analysis. Harmonic model-based methods typically have superior estimation accuracy. However, such methods usually assume that the fundamental frequency and amplitudes are stationary over a short time frame. In this paper, we propose a Kalman filter-based fundamental frequency estimation algorithm using the harmonic model, where the fundamental frequency and amplitudes can be truly nonstationary by modeling their time variations as firstorder Markov chains. The Kalman observation equation is derived from the harmonic model and formulated as a compact nonlinear matrix form, which is further used to derive an extended Kalman filter. Detailed and continuous fundamental fr...
This paper proposes a robust and accurate method of estimating the fundamental frequencies (F0s) for...
In signal processing applications of harmonic-structured signals, estimates of the fundamental frequ...
In recent years there has been increasing interest in nonlinear speech modeling. In our approach, a ...
Fundamental frequency estimation is an important task in speech and audio analysis. Harmonic model-b...
Fundamental frequency is one of the most important characteristics of speech and audio signals. Harm...
In speech processing, the speech is often considered stationary within segments of 20–30 ms even tho...
ICSLP2000: the 6th International Conference on Spoken Language Processing, October 16-20, 2000, Bei...
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 important problem in several applicatio...
This paper presents a speech enhancement method based on the tracking and denoising of the formants ...
A stable and accurate estimation of the fundamental frequency (pitch, F0) is an important requiremen...
For real-time applications, a fundamental frequency estimation algorithm must be able to obtain accu...
Abstract—A novel Kalman filtering/smoothing algorithm is presented for efficient and accurate estima...
The extended Kalman filter has been used to estimate a harmonic signal from noisy measurements. Most...
This paper presents a maximum likelihood approach to multiple fundamental frequency (F0) esti-mation...
This paper proposes a robust and accurate method of estimating the fundamental frequencies (F0s) for...
In signal processing applications of harmonic-structured signals, estimates of the fundamental frequ...
In recent years there has been increasing interest in nonlinear speech modeling. In our approach, a ...
Fundamental frequency estimation is an important task in speech and audio analysis. Harmonic model-b...
Fundamental frequency is one of the most important characteristics of speech and audio signals. Harm...
In speech processing, the speech is often considered stationary within segments of 20–30 ms even tho...
ICSLP2000: the 6th International Conference on Spoken Language Processing, October 16-20, 2000, Bei...
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 important problem in several applicatio...
This paper presents a speech enhancement method based on the tracking and denoising of the formants ...
A stable and accurate estimation of the fundamental frequency (pitch, F0) is an important requiremen...
For real-time applications, a fundamental frequency estimation algorithm must be able to obtain accu...
Abstract—A novel Kalman filtering/smoothing algorithm is presented for efficient and accurate estima...
The extended Kalman filter has been used to estimate a harmonic signal from noisy measurements. Most...
This paper presents a maximum likelihood approach to multiple fundamental frequency (F0) esti-mation...
This paper proposes a robust and accurate method of estimating the fundamental frequencies (F0s) for...
In signal processing applications of harmonic-structured signals, estimates of the fundamental frequ...
In recent years there has been increasing interest in nonlinear speech modeling. In our approach, a ...