Journal article

Efficient Mining of Platoon Patterns in Trajectory Databases

Y Li, J Bailey, L Kulik

Data and Knowledge Engineering | Elsevier | Published : 2015

Abstract

The widespread use of localization technologies produces increasing quantities of trajectory data. An important task in the analysis of trajectory data is the discovery of moving object clusters, i.e., moving objects that travel together for a period of time. Algorithms for the discovery of moving object clusters operate by applying constraints on the consecutiveness of timestamps. However, existing approaches either use a very strict timestamp constraint, which may result in the loss of interesting patterns, or a very relaxed timestamp constraint, which risks discovering noisy patterns. To address this challenge, we introduce a new type of moving object pattern called the platoon pattern. W..

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University of Melbourne Researchers