In this paper we present a stochastic sampling approach to estimate multiple human trajectory in the meeting. The algorithm is formalized as a energy minimization problem based on stochastic sampling of deterministic trajectory, and has some effectiveness to the low frame data with jumps and switchings and it can estimate a near optimal result in 9 times faster then the real-time by using Gibbs sampling. Also experiment is shown using meeting data of real environment.