Journal of Jilin University (Information Science Edition) ›› 2020, Vol. 38 ›› Issue (4): 509-515.
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GAO Zelin,WEI Jin,JIANG Chuandong,DIAO Shu
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Abstract: In order to solve the problem of multiplicative noise interference in MRS signal,a parameter extraction method based on Markov chain Monte Carlo is proposed. The priori information model and likelihood function model of the complex envelope parameters from ground magnetic resonance ( MRS: Magnetic Resonance Sounding) is established. A novel method based on MCMC( Markov Chain Monte Carlo) ,which sample and fit the posterior distribution of the parameters is used to get the data with the most occurrence times of the posterior distribution. The largest weight of the posterior distribution is used as the optimal estimation value of the parameters. By comparing the extraction results of MCMC parameters under different noise conditions with the nonlinear fitting method,it is proved that MCMC method can extract MRS signal parameters with high accuracy and stability,which is under the interference of multiplicative noise.
Key words: Markov chain, Monte Carlo, nonlinear fitting, bayesian theorem
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GAO Zelin, WEI Jin, JIANG Chuandong, DIAO Shu. Paramter Extraction of MRS Based on Markov Chain Monte Carlo[J].Journal of Jilin University (Information Science Edition), 2020, 38(4): 509-515.
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http://xuebao.jlu.edu.cn/xxb/EN/Y2020/V38/I4/509
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