2023
DOI: 10.5194/isprs-archives-xlviii-5-w1-2023-29-2023
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A Method for Measuring Large-Scale Deformation of Landslide Bodies Based on Nap-of-the-Object Photogrammetry

Abstract: Abstract. Geological disasters such as landslides and debris flows pose a serious threat to human life and property. To mitigate this risk, monitoring and early warning systems are essential. However, monitoring high-angle landslide areas can be challenging due to the steep and complex terrain, making it difficult to carry out large-scale and refined deformation measurements using existing methods. This paper proposes a method to measure the large-scale deformation of landslide bodies based on nap-of-the-objec… Show more

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Cited by 2 publications
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“…Currently, there has been extensive research and application of using UAV photogrammetry to obtain geographic information. Wang (Wang et al, 2022) and Qin (Qin and Duan, 2023) have utilized UAVs and close-range photogrammetry for monitoring geological deformations, such as landslides. They generate detailed three-dimensional models using multiple UAV images and calculate the magnitude and direction of deformations for monitoring and trend prediction.…”
Section: Instructionmentioning
confidence: 99%
“…Currently, there has been extensive research and application of using UAV photogrammetry to obtain geographic information. Wang (Wang et al, 2022) and Qin (Qin and Duan, 2023) have utilized UAVs and close-range photogrammetry for monitoring geological deformations, such as landslides. They generate detailed three-dimensional models using multiple UAV images and calculate the magnitude and direction of deformations for monitoring and trend prediction.…”
Section: Instructionmentioning
confidence: 99%