Seasonal Contrast: Unsupervised Pre-Training from Uncurated Remote Sensing Data | IEEE Conference Publication | IEEE Xplore

Seasonal Contrast: Unsupervised Pre-Training from Uncurated Remote Sensing Data


Abstract:

Remote sensing and automatic earth monitoring are key to solve global-scale challenges such as disaster prevention, land use monitoring, or tackling climate change. Altho...Show More

Abstract:

Remote sensing and automatic earth monitoring are key to solve global-scale challenges such as disaster prevention, land use monitoring, or tackling climate change. Although there exist vast amounts of remote sensing data, most of it remains unlabeled and thus inaccessible for supervised learning algorithms. Transfer learning approaches can reduce the data requirements of deep learning algorithms. However, most of these methods are pre-trained on ImageNet and their generalization to remote sensing imagery is not guaranteed due to the domain gap. In this work, we propose Seasonal Contrast (SeCo), an effective pipeline to leverage unlabeled data for in-domain pre-training of remote sensing representations. The SeCo pipeline is composed of two parts. First, a principled procedure to gather large-scale, unlabeled and uncurated remote sensing datasets containing images from multiple Earth locations at different timestamps. Second, a self-supervised algorithm that takes advantage of time and position invariance to learn transferable representations for remote sensing applications. We empirically show that models trained with SeCo achieve better performance than their ImageNet pre-trained counterparts and state-of-the-art self-supervised learning methods on multiple downstream tasks. The datasets and models in SeCo will be made public to facilitate transfer learning and enable rapid progress in remote sensing applications.1
Date of Conference: 10-17 October 2021
Date Added to IEEE Xplore: 28 February 2022
ISBN Information:

ISSN Information:

Conference Location: Montreal, QC, Canada
No metrics found for this document.

1. Introduction

Remote sensing is becoming increasingly important to many applications, including land use monitoring [12], precision agriculture [29], disaster prevention [37], wildfire detection [11], vector-borne disease surveillance [20], and tackling climate change [33]. Combined with recent advances in deep learning and computer vision, there is enormous potential for monitoring global issues through the automated analysis of remote sensing and other geospatial data streams.

Usage
Select a Year
2025

View as

Total usage sinceMar 2022:391
024681012JanFebMarAprMayJunJulAugSepOctNovDec9106000000000
Year Total:25
Data is updated monthly. Usage includes PDF downloads and HTML views.
Contact IEEE to Subscribe

References

References is not available for this document.