Generalized darting Monte Carlo
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摘要
One of the main shortcomings of Markov chain Monte Carlo samplers is their inability to mix between modes of the target distribution. In this paper we show that advance knowledge of the location of these modes can be incorporated into the MCMC sampler by introducing mode-hopping moves that satisfy detailed balance. The proposed sampling algorithm explores local mode structure through local MCMC moves (e.g. diffusion or Hybrid Monte Carlo) but in addition also represents the relative strengths of the different modes correctly using a set of global moves. This ‘mode-hopping’ MCMC sampler can be viewed as a generalization of the darting method [1]. We illustrate the method on learning Markov random fields and evaluate it against the spherical darting algorithm on a ‘real world’ vision application of inferring 3D human body pose distributions from 2D image information.
论文关键词:Markov chain Monte Carlo,Markov random fields,Darting,Constrained optimization,3D reconstruction,Human tracking
论文评审过程:Received 22 September 2008, Revised 18 November 2010, Accepted 5 February 2011, Available online 17 February 2011.
论文官网地址:https://doi.org/10.1016/j.patcog.2011.02.006