A$^{2}$-MAE: A spatial-temporal-spectral unified remote sensing pre-training method based on anchor-aware masked autoencoder
Lixian Zhang, Yi Zhao, Runmin Dong, Jinxiao Zhang, Shuai Yuan, Shilei, Cao, Mengxuan Chen, Juepeng Zheng, Weijia Li, Wei Liu, Wayne Zhang, Litong, Feng, Haohuan Fu

TL;DR
A$^{2}$-MAE introduces a unified pre-training approach for remote sensing data that effectively integrates spatial, temporal, and spectral information using an anchor-aware masked autoencoder and a structured dataset.
Contribution
The paper proposes a novel anchor-aware masked autoencoder and a structured dataset to unify multi-dimensional remote sensing data pre-training, improving downstream task performance.
Findings
Significant improvements in image classification accuracy.
Enhanced semantic segmentation results.
Better change detection performance.
Abstract
Vast amounts of remote sensing (RS) data provide Earth observations across multiple dimensions, encompassing critical spatial, temporal, and spectral information which is essential for addressing global-scale challenges such as land use monitoring, disaster prevention, and environmental change mitigation. Despite various pre-training methods tailored to the characteristics of RS data, a key limitation persists: the inability to effectively integrate spatial, temporal, and spectral information within a single unified model. To unlock the potential of RS data, we construct a Spatial-Temporal-Spectral Structured Dataset (STSSD) characterized by the incorporation of multiple RS sources, diverse coverage, unified locations within image sets, and heterogeneity within images. Building upon this structured dataset, we propose an Anchor-Aware Masked AutoEncoder method (A-MAE), leveraging…
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Taxonomy
TopicsRemote-Sensing Image Classification · Remote Sensing and Land Use · Advanced Computational Techniques and Applications
