Johannes NiedermayerAndreas ZüfleTobias EmrichMatthias RenzNikos MamoulisLei ChenHans‐Peter Kriegel
Nearest neighbor (NN) queries in trajectory databases have received significant attention in the past, due to their applications in spatio-temporal data analysis. More recent work has considered the realistic case where the trajectories are uncertain; however, only simple uncertainty models have been proposed, which do not allow for accurate probabilistic search. In this paper, we fill this gap by addressing probabilistic nearest neighbor queries in databases with uncertain trajectories modeled by stochastic processes, specifically the Markov chain model. We study three nearest neighbor query semantics that take as input a query state or trajectory q and a time interval, and theoretically evaluate their runtime complexity. Furthermore we propose a sampling approach which uses Bayesian inference to guarantee that sampled trajectories conform to the observation data stored in the database. This sampling approach can be used in Monte-Carlo based approximation solutions. We include an extensive experimental study to support our theoretical results.
Tobias EmrichHans‐Peter KriegelNikos MamoulisJohannes NiedermayerMatthias RenzAndreas Züfle
Goce TrajcevskiRoberto TamassiaHui DingPeter ScheuermannIsabel F. Cruz
Yunjun GaoGencai ChenQing LiBaihua ZhengChun Li
Yunjun GaoBaihua ZhengGencai ChenQing Li
Muhammad Aamir CheemaXuemin LinWei WangWenjie ZhangJian Pei