Content area
Surface cracks are key indicators of landslide deformation, crucial for early landslide identification and deformation pattern analysis. However, due to the complex terrain and landslide extent, manual surveys or traditional digital image processing often face challenges with efficiency, precision, and interference susceptibility in detecting these cracks. Therefore, this study proposes a comprehensive automated pipeline to enhance the efficiency and accuracy of landslide surface crack detection. First, high-resolution images of landslide areas are collected using unmanned aerial vehicles (UAVs) to generate a digital orthophoto map (DOM). Subsequently, building upon the U-Net architecture, an improved encoder–decoder semantic segmentation network (IEDSSNet) was proposed to segment surface cracks from the images with complex backgrounds. The model enhances the extraction of crack features by integrating residual blocks and attention mechanisms within the encoder. Additionally, it incorporates multi-scale skip connections and channel-wise cross attention modules in the decoder to improve feature reconstruction capabilities. Finally, post-processing techniques such as morphological operations and dimension measurements were applied to crack masks to generate crack inventories. The proposed method was validated using data from the Heifangtai loess landslide in Gansu Province. Results demonstrate its superiority over current state-of-the-art semantic segmentation networks and open-source crack detection networks, achieving F1 scores and IOU of 82.11% and 69.65%, respectively—representing improvements of 3.31% and 4.63% over the baseline U-Net model. Furthermore, it maintained optimal performance with demonstrated generalization capability under varying illumination conditions. In this area, a total of 1658 surface cracks were detected and cataloged, achieving an accuracy of 85.22%. The method proposed in this study demonstrates strong performance in detecting surface cracks in landslide areas, providing essential data for landslide monitoring, early warning systems, and mitigation strategies.
Details
Digital imaging;
Warning systems;
Accuracy;
Image resolution;
Photogrammetry;
Early warning systems;
Pattern recognition;
Landslides;
Unmanned aerial vehicles;
Loess;
Image processing;
Deformation analysis;
Semantic segmentation;
Automation;
Cracks;
Coders;
Landslides & mudslides;
Image reconstruction;
Pattern analysis;
Image segmentation;
Aerial surveys;
Earthquakes;
Surface cracks;
Morphology;
Semantics
; Bao, Shu 2 ; Zhang, Qin 2 ; Li, Xinrui 1 1 School of Geological Engineering and Geomatics, Chang’an University, Xi’an 710054, China; [email protected] (H.X.); [email protected] (B.S.); [email protected] (Q.Z.); [email protected] (X.L.)
2 School of Geological Engineering and Geomatics, Chang’an University, Xi’an 710054, China; [email protected] (H.X.); [email protected] (B.S.); [email protected] (Q.Z.); [email protected] (X.L.), Key Laboratory of Western China’s Mineral Resources and Geological Engineering, Ministry of Education, Xi’an 710054, China