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As remote sensing technology matures, landslide target segmentation has become increasingly important in disaster prevention, control, and urban construction, playing a crucial role in disaster loss assessment and post-disaster rescue. Therefore, this paper proposes an improved UNet-based landslide segmentation algorithm. Firstly, the feature extraction structure of the model was redesigned by integrating dilated convolution and EMA attention mechanism to enhance the model's ability to extract image features. Additionally, this study introduces the Pag module to replace the original skip connection method, thereby enhancing information fusion between feature maps, reducing pixel information loss, and further improving the model's overall performance. Experimental results show that compared to the original model, our model improves mIoU, Precision, Recall, and F1-score by approximately 2.4%, 2.4%, 3.2%, and 2.8%, respectively. This study not only provides an effective method for landslide segmentation tasks but also offers new perspectives for further research in related fields.
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http://dx.doi.org/10.1038/s41598-025-94039-5 | DOI Listing |
Sci Rep
July 2025
Liaoning Technical University, Fuxin, 123000, China.
The stope end wall in open - pit mining, which acts as a pivotal structure connecting the mining face, presents a concave spatial configuration. Ensuring the stability of such slopes is of paramount importance in mining engineering endeavors. Utilizing the concave slope at the southern extremity of the Nanfen Open - Pit Iron Mine in China as a case study, this research conducts an initial investigation into the instability mechanisms of such heterogeneous slopes through numerical simulation.
View Article and Find Full Text PDFSci Rep
July 2025
Institute of Disaster Prevention, Sanhe, 065201, China.
Accurate landslide segmentation using remote sensing imagery is a critical component of geohazards response systems, particularly in time-sensitive tasks such as post-earthquake landslide damage assessment and emergency resource allocation. However, current methodologies struggle with two persistent challenges in sub-meter true-color imagery: fine-grained inter-class confusion between landslides and spectrally analogous terrain features, and within-landslide heterogeneity where localized damage signatures coexist with macro-scale deformation patterns within individual landslide bodies. To overcome these, we propose the Cross-Attention Landslide Detector (CALandDet), which improves the model's ability to distinguish between landslide and background features by sharply capturing global landslide feature information and integrating global landslide feature information with local information via a cross-attention feature enhancement mechanism.
View Article and Find Full Text PDFSensors (Basel)
June 2025
College of Computers Science and Cyber Security, Chengdu University of Technology, Chengdu 610059, China.
In recent years, remote sensing technology has been extensively used in detecting and managing natural disasters, playing a vital role in the early identification of events like landslides. The integration of deep learning models has considerably enhanced the efficiency and accuracy of landslide detection particularly in automating the analysis and quickly identifying affected areas. However, existing models often face challenges, such as incomplete feature extraction, loss of contextual information, and high computational complexity.
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April 2025
Department of Physics, Aberystwyth University, Penglais, Aberystwyth SY23 3DB, UK.
Landslide detection and segmentation are critical for disaster risk assessment and management. However, achieving accurate segmentation remains challenging due to the complex nature of landslide terrains and the limited availability of high-quality labeled datasets. This paper proposes an enhanced U-Net++ model for semantic segmentation of landslides in the Wenchuan region using the CAS Landslide Dataset.
View Article and Find Full Text PDFPLoS One
April 2025
Department of Allied Health, College of Sport, Health and Engineering, Victoria University, Melbourne, Victoria, Australia.
Climate change is a global phenomenon affecting every segment of the population. Yet, older adults are more vulnerable to climate change events (e.g.
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