Integrating High-Resolution Remote Sensing Data and Spatial Databases for Campus Asset Management Using GIS

https://doi.org/10.55529/jipirs.45.25.40

Authors

  • Ambrose Derzu Department of Geospatial Sciences, University of Energy and Natural Resources (UENR), Sunyani, Ghana.
  • Bernice Ayaab Atugba Department of Land Management, University of Energy and Natural Resources (UENR), Sunyani, Ghana.
  • Ibrahim Adamu Department of Land Management, University of Energy and Natural Resources (UENR), Sunyani, Ghana.
  • Lily Lisa Yevugah Department of Land Management, University of Energy and Natural Resources (UENR), Sunyani, Ghana.
  • Jeff Dacosta Osei Department of Land Management, University of Energy and Natural Resources (UENR), Sunyani, Ghana.

Keywords:

High Resolution, Remote Sensing, Geodatabase, Asset Management, GIS, Postgresql Metadata.

Abstract

Asset management effectively necessitates the usage of high-resolution remotely sensed images integrated with spatial databases for real-time monitoring and analysis. This study presents the development of a comprehensive geodatabase for the University of Energy and Natural Resources (UENR) campus structures, using Quantum Geographic Information System (QGIS) and with the PgMetadata (PostgreSQL Metadata) extension for efficient asset management. A total of 85 campus buildings were digitized, representing 100% of the university’s infrastructure, with 40% categorized as academic, 30% administrative, and 20% residential. The geodatabase integrates both spatial and attribute data, with a positional accuracy of ±2 meters. Metadata creation using PgMetadata improved data accessibility by 75%, standardizing 90% of building datasets. Spatial analysis revealed that 90% of key campus buildings are within 150 meters of essential services, though 8% of buildings lack nearby electricity access. The geodatabase supports real-time decision-making for campus planning, and future expansions are projected to meet a 10% infrastructure increase to accommodate student population growth. Despite challenges in data accuracy and user proficiency, the system reduces manual inventory management time by 60% and supports long-term infrastructure planning. This study demonstrates the effectiveness of integrating QGIS and PostgreSQL for scalable, data-driven campus management solutions.

Published

2024-09-19

How to Cite

Ambrose Derzu, Bernice Ayaab Atugba, Ibrahim Adamu, Lily Lisa Yevugah, & Jeff Dacosta Osei. (2024). Integrating High-Resolution Remote Sensing Data and Spatial Databases for Campus Asset Management Using GIS. Journal of Image Processing and Intelligent Remote Sensing, 4(5), 25–40. https://doi.org/10.55529/jipirs.45.25.40

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