Authors
Joachim Gudmundsson, Marc van Kreveld, Bettina Speckmann
Publication date
2007/6
Journal
GeoInformatica
Volume
11
Issue
2
Pages
195-215
Publisher
Kluwer Academic Publishers-Plenum Publishers
Description
Moving point object data can be analyzed through the discovery of patterns in trajectories. We consider the computational efficiency of detecting four such spatio-temporal patterns, namely flock, leadership, convergence, and encounter, as defined by Laube et al., Finding REMO—detecting relative motion patterns in geospatial lifelines, 201–214, (2004). These patterns are large enough subgroups of the moving point objects that exhibit similar movement in the sense of direction, heading for the same location, and/or proximity. By the use of techniques from computational geometry, including approximation algorithms, we improve the running time bounds of existing algorithms to detect these patterns.
Total citations
200620072008200920102011201220132014201520162017201820192020202120222023202417381662315151366572222
Scholar articles