Remote Sensing (Feb 2024)

An Approach to Large-Scale Cement Plant Detection Using Multisource Remote Sensing Imagery

  • Tianzhu Li,
  • Caihong Ma,
  • Yongze Lv,
  • Ruilin Liao,
  • Jin Yang,
  • Jianbo Liu

DOI
https://doi.org/10.3390/rs16040729
Journal volume & issue
Vol. 16, no. 4
p. 729

Abstract

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The cement industry, as one of the primary contributors to global greenhouse gas emissions, accounts for 7% of the world’s carbon dioxide emissions. There is an urgent need to establish a rapid method for detecting cement plants to facilitate effective monitoring. In this study, a comprehensive method based on YOLOv5-IEG and the Thermal Signature Detection module using Google Earth optical imagery and SDGSAT-1 thermal infrared imagery was proposed to detect large-scale cement plant information, including geographic location and operational status. The improved algorithm demonstrated an increase of 4.8% in accuracy and a 7.7% improvement in [email protected]:95. In a specific empirical investigation in China, we successfully detected 781 large-scale cement plants with an accuracy of 90.8%. Specifically, of the 55 cement plants in Shandong Province, we identified 46 as operational and nine as non-operational. The successful application of advanced models and remote sensing technology in efficiently and accurately tracking the operational status of cement plants provides crucial support for environmental protection and sustainable development.

Keywords