|
MASTER |
Title | Multiple Aspects Trajectory Management and Analysis |
Funding Instrument | H2020-MSCA-RISE-2017 |
Description | An ever-increasing number of diverse, real-life applications, ranging from mobile phone calls to social media and land, sea, and air surveillance systems, produce massive amounts of spatio-temporal data representing trajectories of moving objects. Trajectories, commonly represented by sequences of timestamps and position coordinates, thanks to the high availability of contextual and semantic-rich data can be enriched and are evolving to more comprehensive and semantically significant objects. In the MASTER project we envision holistic trajectories, meaning trajectories characterized by the fact that the spatio-temporal and semantic aspects are intimately correlated and should be considered as a whole. However current state of art does not provide management and analysis methods “ready for use” for these multiple aspects trajectories. The overarching objective of this project is to form an international and inter-sectoral network of partners working on a joint research programme by developing methods to build, manage and analyse multiple aspects trajectories. These methods are driven by application scenarios from three different domains: tourism, sea monitoring and public transportation. |
HUA's role | HUA contributes to the anomaly detection and maritime situational awareness tasks using AIS data, analyzing vessels trajectories. Furtermore it deals with the problem of identifying vessels from interactions among other vessels, since migrant vessels are unlikely to report their positions. HUA develops spatiotemporal relationships between vessels and geographical areas of interest with the aim of detecting SAR actions on migrants. |
Project Budget | €504.000,00 |
HUA Budget | €99.000,00 |
Duration | 01/03/2018-28/02/2022 |
Contact person | Konstantinos Tserpes (This email address is being protected from spambots. You need JavaScript enabled to view it.), Iraklis Varlamis (This email address is being protected from spambots. You need JavaScript enabled to view it.) |
Keywords | trajectory analysis, anomaly detection, infrastructures for trajectories, big data |