Moving point object data can be analyzed through the discovery of patterns. We consider the computational efficiency of detecting four such spatio-temporal patterns, namely flock, leadership, convergence, and encounter, as defined by Laube et al., 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.
Abstract. Recent improvements in positioning technology has led to a much wider availability of mass...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SYNERGIEInternational audienceRecent improvements in pos...
The popularity of tracking devices continues to contribute to increasing volumes of spatio-temporal ...
Moving point object data can be analyzed through the discovery of patterns. We consider the computat...
Moving point object data can be analyzed through the discovery of patterns in trajectories. We consi...
AbstractData representing moving objects is rapidly getting more available, especially in the area o...
Modern data acquisition techniques such as Global positioning system (GPS), Radio-frequency identifi...
A moving cluster is defined by a set of objects that move close to each other for a long time interv...
Data representing moving objects is rapidly getting more available, especially in the area of ...
Recent advances on tracking technologies enable the collection of spatio-temporal data in the form o...
Widespread availability of location aware devices (such as GPS receivers) promotes capture of detail...
Given a database of spatial trajectories reporting the movement of a set of objects in a time frame,...
Given a collection of trajectories of moving objects with different types (e.g., pumas, deers, vultu...
Advances in tracking technology enable the gathering of spatio-temporal data in the form of trajecto...
Movement of point objects are highly sensitive to the underlying situations and conditions during th...
Abstract. Recent improvements in positioning technology has led to a much wider availability of mass...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SYNERGIEInternational audienceRecent improvements in pos...
The popularity of tracking devices continues to contribute to increasing volumes of spatio-temporal ...
Moving point object data can be analyzed through the discovery of patterns. We consider the computat...
Moving point object data can be analyzed through the discovery of patterns in trajectories. We consi...
AbstractData representing moving objects is rapidly getting more available, especially in the area o...
Modern data acquisition techniques such as Global positioning system (GPS), Radio-frequency identifi...
A moving cluster is defined by a set of objects that move close to each other for a long time interv...
Data representing moving objects is rapidly getting more available, especially in the area of ...
Recent advances on tracking technologies enable the collection of spatio-temporal data in the form o...
Widespread availability of location aware devices (such as GPS receivers) promotes capture of detail...
Given a database of spatial trajectories reporting the movement of a set of objects in a time frame,...
Given a collection of trajectories of moving objects with different types (e.g., pumas, deers, vultu...
Advances in tracking technology enable the gathering of spatio-temporal data in the form of trajecto...
Movement of point objects are highly sensitive to the underlying situations and conditions during th...
Abstract. Recent improvements in positioning technology has led to a much wider availability of mass...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SYNERGIEInternational audienceRecent improvements in pos...
The popularity of tracking devices continues to contribute to increasing volumes of spatio-temporal ...