Title :
Inferring Uncertain Trajectories from Partial Observations
Author :
Banerjee, Prithu ; Ranu, Sayan ; Raghavan, Srinath
Author_Institution :
IBM Res., Bangalore, India
Abstract :
The explosion in the availability of GPS-enabled devices has resulted in an abundance of trajectory data. In reality, however, majority of these trajectories are collected at a low sampling rate and only provide partial observations on their actually traversed routes. Consequently, they are mired with uncertainty. In this paper, we develop a technique called Infer Tra to infer uncertain trajectories from network-constrained partial observations. Rather than predicting the most likely route, the inferred uncertain trajectory takes the form of an edge-weighted graph and summarizes all probable routes in a holistic manner. For trajectory inference, Infer Tra employs Gibbs sampling by learning a Network Mobility Model (NMM) from a database of historical trajectories. Extensive experiments on real trajectory databases show that the graph-based approach of Infer Tra is up to 50% more accurate, 20 times faster, and immensely more versatile than state-of-the-art techniques.
Keywords :
Markov processes; directed graphs; inference mechanisms; learning (artificial intelligence); mobile computing; network theory (graphs); uncertainty handling; GPS-enabled device; Gibbs sampling; InferTra; NMM; edge weighted graph; network constrained partial observation; network mobility model; trajectory inference; uncertain trajectory data; Databases; Joining processes; Joints; Random variables; Roads; Trajectory; Uncertainty; network mobility model; partial observations; road network; uncertain trajectory;
Conference_Titel :
Data Mining (ICDM), 2014 IEEE International Conference on
Conference_Location :
Shenzhen
Print_ISBN :
978-1-4799-4303-6
DOI :
10.1109/ICDM.2014.41