Feature Guided Masked Autoencoder for Self-supervised Learning in Remote Sensing

28 Oct 2023  ·  Yi Wang, Hugo Hernández Hernández, Conrad M Albrecht, Xiao Xiang Zhu ·

Self-supervised learning guided by masked image modelling, such as Masked AutoEncoder (MAE), has attracted wide attention for pretraining vision transformers in remote sensing. However, MAE tends to excessively focus on pixel details, thereby limiting the model's capacity for semantic understanding, in particular for noisy SAR images. In this paper, we explore spectral and spatial remote sensing image features as improved MAE-reconstruction targets. We first conduct a study on reconstructing various image features, all performing comparably well or better than raw pixels. Based on such observations, we propose Feature Guided Masked Autoencoder (FG-MAE): reconstructing a combination of Histograms of Oriented Graidents (HOG) and Normalized Difference Indices (NDI) for multispectral images, and reconstructing HOG for SAR images. Experimental results on three downstream tasks illustrate the effectiveness of FG-MAE with a particular boost for SAR imagery. Furthermore, we demonstrate the well-inherited scalability of FG-MAE and release a first series of pretrained vision transformers for medium resolution SAR and multispectral images.

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Datasets


Introduced in the Paper:

EuroSAT-SAR

Used in the Paper:

EuroSAT BigEarthNet

Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Uses Extra
Training Data
Result Benchmark
Multi-Label Image Classification BigEarthNet (official test set) ViT-S/16 mAP (micro) 87.8 # 5
F1 Score 78.9 # 5
Multi-Label Image Classification BigEarthNet (official test set) FG-MAE (ViT-S/16) mAP (micro) 89.3 # 1
F1 Score 80.8 # 1
Multi-Label Image Classification BigEarthNet (official test set) MAE (ViT-S/16) mAP (micro) 88.6 # 4
F1 Score 79.9 # 3
Multi-Label Image Classification BigEarthNet-S1 (official test set) FG-MAE (ViT-S/16) mAP (micro) 82.7 # 1
Multi-Label Image Classification BigEarthNet-S1 (official test set) MAE (ViT-S/16) mAP (micro) 81.3 # 2
Multi-Label Image Classification BigEarthNet-S1 (official test set) ViT-S/16 mAP (micro) 79.5 # 3
Image Classification EuroSAT-SAR FG-MAE (ViT-S/16) Overall Accuracy 85.9 # 1
Image Classification EuroSAT-SAR MAE (ViT-S/16) Overall Accuracy 81.0 # 2
Image Classification EuroSAT-SAR ViT-S/16 Overall Accuracy 78.4 # 3

Methods