Journal of Northeastern University(Natural Science) ›› 2023, Vol. 44 ›› Issue (12): 1759-1768.DOI: 10.12068/j.issn.1005-3026.2023.12.012

• Resources & Civil Engineering • Previous Articles     Next Articles

Remote Sensing Identification Method for Open-Pit Coal Mining Area Based on Improved Faster-RCNN

BAO Ni-sha1, HAN Zi-song1, YU Jia-xin2, WEI Li-hong 3   

  1. 1. School of Resources & Civil Engineering, Northeastern University, Shenyang 110819, China; 2. Changguang Satellite Technology Co., Ltd, Changchun 130000, China; 3. Hulun Buir College, Hulun Buir 021008, China.
  • Published:2024-01-30
  • Contact: BAO Ni-sha
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Abstract: Using satellite remote sensing technology coupled with deep learning algorithms could characterize open-pit coal mining area dynamically and efficiently. This study focused on typical open-pit coal mining areas from China and other major coal-resource countries as research objects. Based on GF-2 multi-spectral remote sensing images, data sets and labels are produced to construct faster-regions with convolutional neural networks(CNN) features target recognition model. Low-resolution semantic layer and high-resolution texture information of mining area and background area were fully mined by incorporating the feature Pyramid network, which could improve faster-regions with CNN features model by optimizing parameters. The results showed that the average detection accuracy was improved to 98.48%, and the overall recognition accuracy reached 96.7%. The improved faster-regions with CNN features model efficiently increases the identification accuracy of multi-scale and multi-type open-pit mining targets in complex backgrounds. These findings can provide a scientific and accurate technical way for global energy cooperation, environmental protection, and mineral resources utilization in China.

Key words: domestic high-resolution imagery; open-pit coal mining areas; object detection; feature pyramids

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