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  5. Real Estate Monitoring System Based on Remote Sensing and Image Recognition Technologies
 
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Real Estate Monitoring System Based on Remote Sensing and Image Recognition Technologies

Journal
Procedia Computer Science
ISSN
1877-0509
Date Issued
2017
Author(s)
Kodors, Sergejs
Rezekne Academy of Technologies 
Aldis Rausis
State Land Service of Latvia
Aivars Ratkevics
Latvia University of Agriculture
Janis Zvirgzds
Riga Technical University
Teilāns, Artis 
Faculty of Engineering 
Ivonna Ansone
Manchester Metropolitan University
DOI
10.1016/j.procs.2017.01.160
Abstract
Geoinformation are changing fast, therefore a change detection of real estate must be processed in short time. The increasing resolution of sensed geospatial data creates critically important to develop high performance computing solutions to process geospatial information.
The topic of scientific work is the real estate monitoring system based on image recognition and remote sensing technologies. System's practical application is automatic building recognition from LiDAR data using saliency based method, vector map generation and change detection in actual cadastral maps. The scientific work describes high performance computing solution and gives its performance comparison with traditional method.
Subjects
  • Geospatial

  • High performance comp...

  • Land administration

  • Laser scanning

  • Remote sensing

  • Saliency

  • Building recognition

File(s)
 main article: Real Estate Monitoring System Based on Remote Sensing and Image Recognition Technologies.pdf (647.89 KB)
Scopus© citations
11
Acquisition Date
Jan 12, 2024
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