Learning with less: label-efficient land cover classification at very high spatial resolution using self-supervised deep learning
Dakota Hester, Vitor S. Martins, Lucas B. Ferreira, Thainara M. A. Lima

TL;DR
This paper demonstrates that self-supervised deep learning enables accurate 1-m resolution land cover classification with minimal annotated data, significantly reducing the need for extensive manual labeling.
Contribution
The study introduces a novel label-efficient approach using self-supervised pre-training for high-resolution land cover mapping with very limited annotated samples.
Findings
Achieved 87.14% overall accuracy with small training sets
Effective transfer of self-supervised encoder to multiple segmentation architectures
Highlighted challenges in delineating certain land cover types
Abstract
Deep learning semantic segmentation methods have shown promising performance for very high 1-m resolution land cover classification, but the challenge of collecting large volumes of representative training data creates a significant barrier to widespread adoption of such models for meter-scale land cover mapping over large areas. In this study, we present a novel label-efficient approach for statewide 1-m land cover classification using only 1,000 annotated reference image patches with self-supervised deep learning. We use the "Bootstrap Your Own Latent" pre-training strategy with a large amount of unlabeled color-infrared aerial images (377,921 patches of 256x256 pixels at 1-m resolution) to pre-train a ResNet-101 convolutional encoder. The learned encoder weights were subsequently transferred into multiple deep semantic segmentation architectures (FCN, U-Net, Attention U-Net,…
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Taxonomy
TopicsRemote Sensing in Agriculture · Remote-Sensing Image Classification · Advanced Neural Network Applications
