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Main Authors: Li, Zhihao, Hou, Biao, Ma, Siteng, Wu, Zitong, Guo, Xianpeng, Ren, Bo, Jiao, Licheng
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2408.01946
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author Li, Zhihao
Hou, Biao
Ma, Siteng
Wu, Zitong
Guo, Xianpeng
Ren, Bo
Jiao, Licheng
author_facet Li, Zhihao
Hou, Biao
Ma, Siteng
Wu, Zitong
Guo, Xianpeng
Ren, Bo
Jiao, Licheng
contents To overcome the inherent domain gap between remote sensing (RS) images and natural images, some self-supervised representation learning methods have made promising progress. However, they have overlooked the diverse angles present in RS objects. This paper proposes the Masked Angle-Aware Autoencoder (MA3E) to perceive and learn angles during pre-training. We design a \textit{scaling center crop} operation to create the rotated crop with random orientation on each original image, introducing the explicit angle variation. MA3E inputs this composite image while reconstruct the original image, aiming to effectively learn rotation-invariant representations by restoring the angle variation introduced on the rotated crop. To avoid biases caused by directly reconstructing the rotated crop, we propose an Optimal Transport (OT) loss that automatically assigns similar original image patches to each rotated crop patch for reconstruction. MA3E demonstrates more competitive performance than existing pre-training methods on seven different RS image datasets in three downstream tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2408_01946
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Masked Angle-Aware Autoencoder for Remote Sensing Images
Li, Zhihao
Hou, Biao
Ma, Siteng
Wu, Zitong
Guo, Xianpeng
Ren, Bo
Jiao, Licheng
Computer Vision and Pattern Recognition
To overcome the inherent domain gap between remote sensing (RS) images and natural images, some self-supervised representation learning methods have made promising progress. However, they have overlooked the diverse angles present in RS objects. This paper proposes the Masked Angle-Aware Autoencoder (MA3E) to perceive and learn angles during pre-training. We design a \textit{scaling center crop} operation to create the rotated crop with random orientation on each original image, introducing the explicit angle variation. MA3E inputs this composite image while reconstruct the original image, aiming to effectively learn rotation-invariant representations by restoring the angle variation introduced on the rotated crop. To avoid biases caused by directly reconstructing the rotated crop, we propose an Optimal Transport (OT) loss that automatically assigns similar original image patches to each rotated crop patch for reconstruction. MA3E demonstrates more competitive performance than existing pre-training methods on seven different RS image datasets in three downstream tasks.
title Masked Angle-Aware Autoencoder for Remote Sensing Images
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2408.01946