활용사례

활용 사례
제목 U-Net++와 저랭크 행렬 분해를 이용한 KOMPSAT-3 영상기반 DEM 정교화 기법에 관한 기초연구
국/내외 국내 작성일 2026-02-09

U-Net++와 저랭크 행렬 분해를 이용한 KOMPSAT-3 영상기반 DEM 정교화 기법에 관한 기초연구 첨부 이미지

Digital elevation models (DEMs) are essential for applications such as hydrologic analysis and urban planning, and the demand for satellite image.based DEMs is growing with the spread of high-resolution imagery. However, conventional satellite-based DEM generation often suffers from local noise and global structural distortion in complex terrain and urban areas. This study proposes a hybrid DEM refinement method that combines traditional morphological filtering, deep learning.based U-Net/U-Net++, and low-rank matrix decomposition. Using KOMPSAT-3 imagery over San Francisco (USA) and Toronto (Canada), DEMs generated by three commercial software packages were compared with DEMs refined by the proposed method for mountainous and flat terrain, based on RMSE, MAE, and bias against a reference DEM. The proposed approach reduced RMSE and MAE by approximately 50.70% and constrained bias to within about ±1 m, with especially large improvements in mountainous areas, demonstrating the effectiveness of combining low-rank decomposition and U-Net++ for satellite image.based DEM refinement.



Keywords : DEM, KOMPSAT-3, Deep Learning, Low-Rank Matrix Decomposition, Morphological Filtering

출처 https://www.kci.go.kr
이전/이후 글
이전글 Wildfire in Chile
다음글 Wildfire in Chile

네팔:지진(2015-05-05)

영상 정보
카테고리 재난재해
위성정보 KOMPSAT-3
생성일 2015-03-24

세부정보

영상 세부 정보
ProductID K3_20150505073608_15817_06161210
국가(영문) Nepal
국가 네팔
지역 Pokhara
레벨 1R