In this paper, we present a Big data framework for the pre- diction of streaming trajectory data by exploiting mined patterns of tra- jectories, allowing accurate long-term predictions with low latency. In particular, to meet this goal we follow a two-step methodology. First, we efficiently identify the hidden mobility patterns in an offline manner. Subsequently, the trajectory prediction algorithm exploits these patterns in order to prolong the temporal horizon of useful predictions. The exper- imental study is based on real-world aviation and maritime datasets
Abstract—With the vast availability of traffic sensors fromwhich traffic information can be derived,...
With the proliferation of GPS-enabled devices, trajectory data is being generated at an unprecedente...
In this work, we propose a data driven trajectory forecasting algorithm that utilizes both recorded ...
This paper presents a system where the personal route of a user is predicted using a probabilistic m...
This paper presents a system where the personal route of a user is predicted using a probabilistic m...
This paper presents a system where the personal route of a user is predicted using a probabilistic m...
Motion prediction of various objects is important for work of many people. We have to distinguish be...
Recent technological trends enable modern traffic prediction and management systems in which the ana...
As smartphones and GPS-enabled devices proliferate, location-based services become all the more impo...
PolyU Library Call No.: [THS] LG51 .H577P COMP 2016 Liangxiii, 172 pages :color illustrationsNowaday...
The discovery of route patterns from trajectory data generated by moving objects is an essential pro...
We put forth a system, to predict distant-future positions of multiple moving entities and index the...
We put forth a system, to predict distant-future positions of multiple moving entities and index the...
This paper introduces two data-driven approaches for vessel trajectory prediction based on AIS data:...
This dissertation challenges an unstudied area in moving objects database domains; predicting (long-...
Abstract—With the vast availability of traffic sensors fromwhich traffic information can be derived,...
With the proliferation of GPS-enabled devices, trajectory data is being generated at an unprecedente...
In this work, we propose a data driven trajectory forecasting algorithm that utilizes both recorded ...
This paper presents a system where the personal route of a user is predicted using a probabilistic m...
This paper presents a system where the personal route of a user is predicted using a probabilistic m...
This paper presents a system where the personal route of a user is predicted using a probabilistic m...
Motion prediction of various objects is important for work of many people. We have to distinguish be...
Recent technological trends enable modern traffic prediction and management systems in which the ana...
As smartphones and GPS-enabled devices proliferate, location-based services become all the more impo...
PolyU Library Call No.: [THS] LG51 .H577P COMP 2016 Liangxiii, 172 pages :color illustrationsNowaday...
The discovery of route patterns from trajectory data generated by moving objects is an essential pro...
We put forth a system, to predict distant-future positions of multiple moving entities and index the...
We put forth a system, to predict distant-future positions of multiple moving entities and index the...
This paper introduces two data-driven approaches for vessel trajectory prediction based on AIS data:...
This dissertation challenges an unstudied area in moving objects database domains; predicting (long-...
Abstract—With the vast availability of traffic sensors fromwhich traffic information can be derived,...
With the proliferation of GPS-enabled devices, trajectory data is being generated at an unprecedente...
In this work, we propose a data driven trajectory forecasting algorithm that utilizes both recorded ...