Likelihood-surface based discretization for tracking via tree search

Information Sciences and Systems(2013)

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摘要
A new discretization technique based on local maxima of the observation likelihood surface is proposed for tree-search based tracking of dim targets in heavy clutter. The joint likelihood of sensor observations over the target state space is evaluated in the vicinity of the previously estimated target state, and its local maxima are selected as new states for discretization. The discretized states are used to build a search tree, which is navigated using the stack algorithm to approximate the maximum a posteriori tracking solution. Simulation results on a benchmark active sonar data set reveal that the proposed algorithm is able to follow dim maneuvering targets without track fragmentation.
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关键词
maximum likelihood estimation,sensors,target tracking,tree searching,dim maneuvering targets,dim target tracking,discretization technique,likelihood-surface based discretization,local maxima,maximum a posteriori tracking solution,observation likelihood surface,sensor observations,stack algorithm,tree-search based target tracking,Target tracking,likelihood surface,tree search
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