Difference between revisions of "Outputs"

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* Z. Feng et al. [https://arxiv.org/abs/2506.20380 TESSERA: Temporal Embeddings of Surface Spectra for Earth Representation and Analysis], July 2025.
 
* Z. Feng et al. [https://arxiv.org/abs/2506.20380 TESSERA: Temporal Embeddings of Surface Spectra for Earth Representation and Analysis], July 2025.
 
* M. C. Lisaius, A. Blake, S. Keshav and C. Atzberger, [https://ieeexplore.ieee.org/abstract/document/10592304 Using Barlow Twins to Create Representations From Cloud-Corrupted Remote Sensing Time Series], ''IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing'', vol. 17, pp. 13162-13168, 2024.
 
* M. C. Lisaius, A. Blake, S. Keshav and C. Atzberger, [https://ieeexplore.ieee.org/abstract/document/10592304 Using Barlow Twins to Create Representations From Cloud-Corrupted Remote Sensing Time Series], ''IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing'', vol. 17, pp. 13162-13168, 2024.
* First [ paper] (2024) demonstrating that spectral-temporal representations from optical EO time series can be learned fully self-supervised using the Barlow Twins loss function - demonstration on crop type classification
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Revision as of 13:47, 1 October 2025

Software

  • GeoTessera Python library for accessing and working with Tessera geospatial foundation model embeddings. GeoTessera provides access to geospatial embeddings from the Tessera foundation model, which processes Sentinel-1 and Sentinel-2 satellite imagery to generate 128-channel representation maps at 10m resolution. These embeddings compress a full year of temporal-spectral features into dense representations optimized for downstream geospatial analysis tasks.
  • Interactive Tessera Embedding Classifier This repository contains a Jupyter notebook based tool for interactive, human-in-the-loop classification of geospatial data using the Tessera foundation model embeddings. The tool allows a user to define an area of interest, visualize the high-dimensional embedding data with PCA, and iteratively train a machine learning model by simply clicking on the map to label.

Papers


Please follow this link for papers in progress and under submission.

Presentations

Demos

Linked here.

Prior work

  • Original Barlow Twin paper by Zbontar et al. (2021) for classical still images which inspired the development of a spectral-temporal representation learning
  • Master's report (2022) with the first implementation of the Barlow Twins at Cambridge University (link)
  • First paper (2024) demonstrating that spectral-temporal representations from optical EO time series can be learned fully self-supervised using the Barlow Twins loss function - demonstration on crop type classification
  • First paper (2025) demonstrating the effectiveness of spectral-temporal representations for AGB monitoring in tropical countries