CONCEDE
23, July 2014

PROJECT TITLE: Content Based Query Concept for Exploration and Discovery of Information in Earth Observation and Medical Libraries — CONCEDE

Coordinator: University Politehnica of Bucharest, Research Center for Spatial Information, UPB — CeoSpaceTech 

Partners: SC Advanced Studies and Research Center SRL (ASRC)

Period: 19 November 2012 – 18 November 2015

Project director: Corina Vaduva

Project team: The project team includes 1 Senior Scientific Researcher, 2 Scientific Researchers and 2 PhD student from UPB-CeoSpaceTech and 5 Scientific Researchers from ASRC.

Description: The project will exploit the full scope of image processing, database management and human knowledge in order to define an applicative framework to explore heterogeneous data resources, resulting in the discovery of semantic information hidden in image libraries. The project goal is to develop a demonstrator, a query engine concept widely applicable for several types of data, in order to validate and evaluate the acpabilities of the proposed content based information retrieval concept. The architecture will be modular, such that the concept can be anytime updated with new algorithms and methods.

Project objectives:

  • Contributions to European Space Agency (ESA) research activities
  • Contributions to scientifically development
  • Contribution to new applications solutions development

Activities:

  • WP1: Project Management and Reporting
  • WP2: Analysis and Review
  • WP3: CONCEDE Demonstrator Concept
  • WP4: CONCEDE Demonstrator
  • WP5: CONCEDE Demonstrato Elaboration
  • WP6: Validation and Evaluation

Contributions to the STAR programme objectives:

  • CONCEDE project aims at enhacing the functionalities of the Earth Observation (EO) Payload Ground Segment systems and the next-generation services for an enhanced data content exploration with focus on Sentinel 1 and 2.
  • Development of a new generation of data mining (DM) tools and knowledge discovery in databases (KDD) concepts and algorithms based on data compression in order to simplify the feature extraction process and to avoid the information loss between low level and high level characteristics.
  • Define of a new query concept that offers a complementary solution to other existing systems in the sense that it will fill an important gap between approaces like image annotation, image indexing, query by image content, data mining and knowledge and data discovery in terms of user perspective. The compression based parameter free algorithms will underpin a new generation of services for EO as well as medical user issues, independent of the data type used.
  • Develop a new modular concept, with a general architecture framework which will allow periodic update with newly implemented methods and algorithms further developed for specific data.
  • This project opens new opportunities to improve the technology readiness level for Big Data analytics.
  • Project management is made according to ESA templates and rules.

Homepage: