English

LightFormer: A lightweight and efficient decoder for remote sensing image segmentation

Computer Vision and Pattern Recognition 2026-01-12 v3

Abstract

Deep learning techniques have achieved remarkable success in the semantic segmentation of remote sensing images and in land-use change detection. Nevertheless, their real-time deployment on edge platforms remains constrained by decoder complexity. Herein, we introduce LightFormer, a lightweight decoder for time-critical tasks that involve unstructured targets, such as disaster assessment, unmanned aerial vehicle search-and-rescue, and cultural heritage monitoring. LightFormer employs a feature-fusion and refinement module built on channel processing and a learnable gating mechanism to aggregate multi-scale, multi-range information efficiently, which drastically curtails model complexity. Furthermore, we propose a spatial information selection module (SISM) that integrates long-range attention with a detail preservation branch to capture spatial dependencies across multiple scales, thereby substantially improving the recognition of unstructured targets in complex scenes. On the ISPRS Vaihingen benchmark, LightFormer attains 99.9% of GLFFNet's mIoU (83.9% vs. 84.0%) while requiring only 14.7% of its FLOPs and 15.9% of its parameters, thus achieving an excellent accuracy-efficiency trade-off. Consistent results on LoveDA, ISPRS Potsdam, RescueNet, and FloodNet further demonstrate its robustness and superior perception of unstructured objects. These findings highlight LightFormer as a practical solution for remote sensing applications where both computational economy and high-precision segmentation are imperative.

Keywords

Cite

@article{arxiv.2504.10834,
  title  = {LightFormer: A lightweight and efficient decoder for remote sensing image segmentation},
  author = {Sihang Chen and Lijun Yun and Ze Liu and JianFeng Zhu and Jie Chen and Hui Wang and Yueping Nie},
  journal= {arXiv preprint arXiv:2504.10834},
  year   = {2026}
}

Comments

The manuscript was submitted without obtaining the consent of the other co-authors. We therefore request the withdrawal of the manuscript

R2 v1 2026-06-28T22:58:35.313Z