Archive/DEGC-TransUNet: A Dual-Encoder TransUNet with Global Context Enhancement for Mountaintop Area Extraction from Grid DEMs
DEGC-TransUNet: A Dual-Encoder TransUNet with Global Context Enhancement for Mountaintop Area Extraction from Grid DEMs
Fangbin Zhou, Junwei Bian, Jiamin Huang
May 8, 2026
en

Abstract

Accurate extraction of mountaintop areas from grid digital elevation models (DEMs) is essential for terrain analysis, geomorphological research, hydrological modeling, natural disaster monitoring, and emergency communication site selection. However, existing deep-learning-based methods often suffer from inadequate representation of local details and limited global contextual awareness, leading to blurred boundaries and reduced segmentation accuracy in complex mountainous terrains. To address these limitations, this study proposes a dual-encoder and global-context-enhanced TransUNet framework, named DEGC-TransUNet, for automated mountaintop delineation. The architecture integrates a convolutional encoder to capture fine-grained local terrain features and a MaxViT-based encoder to model multi-scale global context by encoding low-dimensional topographic attributes such as slope and curvature. A dedicated feature fusion module harmonizes complementary representations from both encoding paths, while a BiFormer-based strategy is introduced at the bottleneck to strengthen long-range dependencies and enhance convergence. The experimental results demonstrate that DEGC-TransUNet significantly outperforms baseline models such as TransUNet, DE-TransUNet, and GC-TransUNet, with relative improvements of 19.8% in Intersection over Union (IoU), 10.4% in overall accuracy (ACC), and 10.9% in F1-score. These findings provide a robust solution for mountaintop extraction, with significant potential in analyzing geomorphological evolution, simulating soil erosion, modeling species distribution in “sky island” ecosystems, and optimizing strategic placements for communication base stations and wind energy infrastructures.

IPC Classification

H04A01H01

Keywords

degc-transunetdual-encodertransunetglobalcontextenhancementmountaintopareaextractiongriddemsappliedsciencesaccurateareasdigitalelevationmodelsessentialterrainanalysisgeomorphologicalresearchhydrological
Reference this publication

€ 4.00