Title :
A fast algorithm for maximum likelihood-based fundamental frequency estimation
Author :
Jesper Kjcer Nielsen;Tobias Lindstr⊘m Jensen;Jesper Rindom Jensen;Mads Græsb⊘ll Christensen;S⊘ren Holdt Jensen
Author_Institution :
Aalborg University, Denmark, Dept. of Electronic Systems
Abstract :
Periodic signals are encountered in many applications. Such signals can be modelled by a weighted sum of sinusoidal components whose frequencies are integer multiples of a fundamental frequency. Given a data set, the fundamental frequency can be estimated in many ways including a maximum likelihood (ML) approach. Unfortunately, the ML estimator has a very high computational complexity, and the more inaccurate, but faster correlation-based estimators are therefore often used instead. In this paper, we propose a fast algorithm for the evaluation of the ML cost function for complex-valued data over all frequencies on a Fourier grid and up to a maximum model order. The proposed algorithm significantly reduces the computational complexity to a level not far from the complexity of the popular harmonic summation method which is an approximate ML estimator.
Keywords :
"Signal processing algorithms","Mathematical model","Cost function","Computational modeling","Frequency estimation","Complexity theory","Approximation algorithms"
Conference_Titel :
Signal Processing Conference (EUSIPCO), 2015 23rd European
Electronic_ISBN :
2076-1465
DOI :
10.1109/EUSIPCO.2015.7362451