• Spacecraft Recovery & Remote Sensing
  • Vol. 45, Issue 1, 147 (2024)
Hui WANG1, Shuochao FAN1, Xiaoyin HUANG2, Peng QIU2, Jingzhe YU3, and Jintian LI4、*
Author Affiliations
  • 1State Grid Jibei Electric Power Co. Ltd., Beijing 100054, China
  • 2Beijing EHV Power Transmission Company, State Grid Jibei Electric Power Co. Ltd., Beijing 102488, China
  • 3Electric Power Research Institute, State Grid Jibei Electric Power Co. Ltd., Beijing 100045, China
  • 4Beijing Deep Blue Space Remote Sensing Technology Co., Ltd., Beijing 100101, China
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    DOI: 10.3969/j.issn.1009-8518.2024.01.013 Cite this Article
    Hui WANG, Shuochao FAN, Xiaoyin HUANG, Peng QIU, Jingzhe YU, Jintian LI. Research on Real-Time Automatic Landslide Recognition Technology Based on Optical Image[J]. Spacecraft Recovery & Remote Sensing, 2024, 45(1): 147 Copy Citation Text show less

    Abstract

    The research on real-time automatic identification technology for landslides is of great significance for protecting people’s lives, property, and ecological safety. It can solve the problem of poor timeliness in landslide risk investigation and prevention due to the lack of timely identification of landslides at present. Considering the changes of vegetation coverage index (NDVI) as one of the important criteria for landslide detection, the article combines NDVI change detection technology, automatic threshold selection algorithm, and morphological technology to achieve real-time and automatic recognition of landslides. Compared with existing research algorithms, Compared with existing research algorithms, it adds some important parameters in the automatic landslide recognition process (such as NDVI, mountain shadows, etc.). The adaptive automatic threshold selection algorithm reduces manual involvement and significantly enhances its timeliness while ensuring high recognition accuracy. This article is based on two optical images and takes a certain area in Mentougou District, Beijing as the research area. Real time and automatic recognition of landslides in this area from September 7, 2021 to September 7, 2022 is carried out, using the results of manual visual interpretation as the correct standard. The recognition results of the article are compared with their accuracy, and the landslide detection rate reached 92.31%, proving the accuracy and high efficiency of this method for detecting landslides. Finally, the method is applied to the central part of Dujiangyan City, which further proves the effectiveness and generalization ability of the method.
    Hui WANG, Shuochao FAN, Xiaoyin HUANG, Peng QIU, Jingzhe YU, Jintian LI. Research on Real-Time Automatic Landslide Recognition Technology Based on Optical Image[J]. Spacecraft Recovery & Remote Sensing, 2024, 45(1): 147
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