Multidimensional GIS for satellite imagery analysis - Publication - Bridge of Knowledge

Search

Multidimensional GIS for satellite imagery analysis

Abstract

Multidimensional Geographical Information System allows storing, querying and processing of multidimensional query data. It is able to process satellite imagery and provide tools for its analysis. In the article authors present the developed system that analyzes a time series of SENTINEL - 1 mission satellite imagery acquired over the coast of Poland. The algorithm used finds and detects changes in the shape of the coastline over a long period of time. The system uses a Raster Data Manager array database management system to simplify the process of data querying, trimming, storing and analysing. Authors present how the recent trends in GIS development, like RASDAMAN, can be applied to satellite imagery processing.

Cite as

Full text

download paper
downloaded 83 times
Publication version
Accepted or Published Version
License
Creative Commons: CC-BY-NC-SA open in new tab

Keywords

Details

Category:
Articles
Type:
artykuły w czasopismach recenzowanych i innych wydawnictwach ciągłych
Published in:
HYDROACOUSTICS no. 20, pages 41 - 50,
ISSN: 1642-1817
Language:
English
Publication year:
2017
Bibliographic description:
Drypczewski K., Markiewicz Ł., Stepnowski A.: Multidimensional GIS for satellite imagery analysis// HYDROACOUSTICS. -Vol. 20., (2017), s.41-50
Bibliography: test
  1. K. Drypczewski, A. Stepnowski, SOLAP GIS in maritime research, Hydroacoustics pp. 93-100, vol. 19, 2016, Gdansk. open in new tab
  2. K. Drypczewski, B. Wiśniewski, M. Kulawiak, K. Bruniecki, GIS for processing multidimensional marine data in SAAS model, Hydroacoustics pp. 47-58, vol. 16, 2013, Gdansk.
  3. P. Snoeij, E.Attema, M.Davidson, The Sentinel-1 radar mission: status and performance, Radar Conference -Surveillance for a Safer World, 2009. open in new tab
  4. A. Rucci, A. Ferretti, A. Monti Guarnieri, F. Rocca, Sentinel 1 SAR interferometry applications: The outlook for sub millimeter measurements, Remote Sensing of Environment Volume 120, p. 156-163, 2012. open in new tab
  5. S-1 Polarimetry, https://sentinel.esa.int/web/sentinel/user-guides/sentinel-1-sar/product- overview/polarimetry.
  6. P. Baumann, A. Dehmel, M. Höfner, N. Widmann, Exploring Sensor and Simulation Raw Data with RasDaMan. Extending Database Technology (EDBT) 2000, March 27- 31, 2000, Konstanz, Germany. open in new tab
  7. L. Libkin, R. Machlin, L. Wong, A query language for multidimensional arrays: Design, implementation, and optimization techniques, Proceedings of the ACM SIGMOD'96, 1996, Montreal, Canada, pp. 228 -239. open in new tab
  8. A. Marathe, K. Salem: Query Processing Techniques for Arrays, Proceedings of the ACM SIGMOD'99, 1999, Philadelphia, USA, pp. 323-334. open in new tab
  9. S. Sarawagi, M. Stonebraker: Efficient Organization of Large Multidimensional Arrays, Proceedings of the ICDE'94, 1994 Houston, USA, pp. 328-336. open in new tab
  10. P. Baumann, A. Dehmel, P. Furtado, R. Ritsch, N. Widmann, Spatio-Temporal Retrieval with RasDaMan. Very Large Data Bases (VLDB) 1999, September 7-10, 1999, Edinburgh, Scotland, UK, Morgan Kaufmann 1999, pp. 746-749. open in new tab
  11. Rasdaman website, http://www.rasdaman.org/
  12. P. Baumann, Query Language Guide, http:// rasdaman.eecs.jacobs- university.de/trac/rasdaman/browser/manuals_and_examples/manuals/pdf/ql-guide.pdf. open in new tab
  13. International Organization for Standardization (ISO): Database Language SQL. ISO 9075, 1992(E), 1992. open in new tab
  14. Copernicus overview, http://www.esa.int/Our_Activities/Observing_the_Earth/Copernicus/Overview4 open in new tab
  15. Copernicus Open Access Hub, https://scihub.copernicus.eu/. open in new tab
  16. M. Piccardi, Background subtraction techniques: a review, IEEE International Conference on Systems, Man and Cybernetics, 2004. open in new tab
  17. Dar-Shyang Lee, Effective Gaussian mixture learning for video background subtraction, IEEE Transactions on Pattern Analysis and Machine Intelligence, Volume 27, Issue 5, 2005.
  18. O.Barnich, M. Van Droogenbroeck, ViBe: A Universal Background Subtraction Algorithm for Video Sequences, IEEE Transactions on Image Processing, Volume 20, Issue 6, 2011. open in new tab
Verified by:
Gdańsk University of Technology

seen 128 times

Recommended for you

Meta Tags