Estimation of frequencies of multiple sinusoids: Making linear prediction perform like maximum likelihood
- Authors
- D.W. TuftsR. Kumaresan
- Journal
- Proceedings of the IEEE
In The Last Decade
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About Estimation of frequencies of multiple sinusoids: Making linear prediction perform like maximum likelihood
This paper, published in 1982, received 762 indexed citations . Written by D.W. Tufts and R. Kumaresan covering the research area of Oceanography, Civil and Structural Engineering and Signal Processing. It is primarily cited by scholars working on Signal Processing (511 citations), Computational Mechanics (218 citations) and Civil and Structural Engineering (214 citations). Published in Proceedings of the IEEE.
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This paper is also available at doi.org/10.1109/proc.1982.12428.