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Learning from Noisy Pseudo-labels for All-Weather Land Cover Mapping

A semi-supervised learning approach combined with image resolution alignment and symmetric cross-entropy loss improves SAR image segmentation by generating precise pseudo-labels and achieving top performance in a GRSS data fusion contest.

Year
2025
Venue
arXiv 2025
Authors
6
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arxiv.org/abs/2504.13458ARXIV-DEFAULT
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Abstract

Semantic segmentation of SAR images has garnered significant attention in remote sensing due to the immunity of SAR sensors to cloudy weather and light conditions. Nevertheless, SAR imagery lacks detailed information and is plagued by significant speckle noise, rendering the annotation or segmentation of SAR images a formidable task. Recent efforts have resorted to annotating paired optical-SAR images to generate pseudo-labels through the utilization of an optical image segmentation network. However, these pseudo-labels are laden with noise, leading to suboptimal performance in SAR image segmentation. In this study, we introduce a more precise method for generating pseudo-labels by incorporating semi-supervised learning alongside a novel image resolution alignment augmentation. Furthermore, we introduce a symmetric cross-entropy loss to mitigate the impact of noisy pseudo-labels. Additionally, a bag of training and testing tricks is utilized to generate better land-cover mapping results. Our experiments on the GRSS data fusion contest indicate the effectiveness of the proposed method, which achieves first place. The code is available at https://github.com/StuLiu/DFC2025Track1.git.

Authors

6