Lightweight, Pre-trained Transformers for Remote Sensing Timeseries

04/27/2023
by   Gabriel Tseng, et al.
0

Machine learning algorithms for parsing remote sensing data have a wide range of societally relevant applications, but labels used to train these algorithms can be difficult or impossible to acquire. This challenge has spurred research into self-supervised learning for remote sensing data aiming to unlock the use of machine learning in geographies or application domains where labelled datasets are small. Current self-supervised learning approaches for remote sensing data draw significant inspiration from techniques applied to natural images. However, remote sensing data has important differences from natural images – for example, the temporal dimension is critical for many tasks and data is collected from many complementary sensors. We show that designing models and self-supervised training techniques specifically for remote sensing data results in both smaller and more performant models. We introduce the Pretrained Remote Sensing Transformer (Presto), a transformer-based model pre-trained on remote sensing pixel-timeseries data. Presto excels at a wide variety of globally distributed remote sensing tasks and outperforms much larger models. Presto can be used for transfer learning or as a feature extractor for simple models, enabling efficient deployment at scale.

READ FULL TEXT

page 3

page 4

page 13

research
03/30/2021

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

Remote sensing and automatic earth monitoring are key to solve global-sc...
research
02/28/2023

Remote Sensing Scene Classification with Masked Image Modeling (MIM)

Remote sensing scene classification has been extensively studied for its...
research
09/26/2022

Improving Image Clustering through Sample Ranking and Its Application to remote–sensing images

Image clustering is a very useful technique that is widely applied to va...
research
04/10/2022

TOV: The Original Vision Model for Optical Remote Sensing Image Understanding via Self-supervised Learning

Do we on the right way for remote sensing image understanding (RSIU) by ...
research
09/18/2023

Scalable Label-efficient Footpath Network Generation Using Remote Sensing Data and Self-supervised Learning

Footpath mapping, modeling, and analysis can provide important geospatia...
research
06/26/2023

Spectral Analysis of Marine Debris in Simulated and Observed Sentinel-2/MSI Images using Unsupervised Classification

Marine litter poses significant threats to marine and coastal environmen...
research
08/19/2021

Topo2vec: Topography Embedding Using the Fractal Effect

Recent advances in deep learning have transformed many fields by introdu...

Please sign up or login with your details

Forgot password? Click here to reset