Abstract:
"Many tropical nations experience frequent heavy rains that lead to disasters such as floods and
landslides. Landslides are a frequent geological catastrophe that results in significant casualties
and financial losses each year. Having prompt access to information about disasters is critical in
ensuring effective disaster response and mitigation measures. To minimize harm to people and
property, disaster management authorities work to recover and rescue those affected.
Currently, satellite images are used to identify larger areas affected by landslides in the aftermath
of the disaster. The traditional satellite image processing methods face difficulties due to orbital
cycles and poor weather conditions, leading to challenges in obtaining timely information about
affected areas.
The solution being proposed seeks to reduce both human fatalities and financial damages during
disaster recovery efforts. This is to be achieved through an investigation of landslide detection
techniques that rely on remote sensing images captured by unmanned aerial vehicles (UAVs). With
accuracy challenges and limited training data for landslide detection, new technologies and
techniques need to be utilized to find landslide disasters effectively. The proposed system will
utilize transfer learning and aerial images to provide a reliable system for pre-identifying
landslides.
The proposed system offers improved detection performance compared to the deep learning
based model, providing more accurate data support for disaster rescue decision-making. The
experimental outcomes show that the Landslide Detection System can enhance both accuracy and
processing time without hindering the standard model's performance. Specifically, the system was
found to increase accuracy and precision by 5 to 25% compared to the models currently being
evaluated. "