摘要
In this paper,a hybrid approach which combines linear sampling method and the Bayesian method is proposed to simultaneously reconstruct multiple obsta-cles.The number of obstacles and the approximate geometric information arefirst qualitatively obtained by the linear sampling method.Based on the reconstructions of the linear sampling method,the Bayesian method is employed to obtain more refined details of the obstacles.The well-posedness of the posterior distribution is proved by using the Hellinger metric.The Markov Chain Monte Carlo algorithm is proposed to explore the posterior density with the initial guesses provided by the linear sampling method.Numerical experiments are provided to testify the effectiveness and efficiency of the proposed method.
基金
supported by the Jilin Sci-Tech fund under JJKH20210797KJ
supported by a startup grant from City University of Hong Kong and Hong Kong RGC General Research Funds(projects 12301218,12302919 and 12301420).