PyTorch EO aims to make Deep Learning for Earth Observation data easy and accessible to real-world cases and research alike.

Overview

Pytorch EO

Deep Learning for Earth Observation applications and research.

🚧 This project is in early development, so bugs and breaking changes are expected until we reach a stable version.

Installation

pip install pytorch-eo

Examples

Learn by doing with our examples.

Ready to use Datasets

Challenges

PytorchEO has been used in the following challenges:

  • EUROAVIA Mission: European Students Space Hackathon, 2021.
  • On Cloud N: Cloud Cover Detection Challenge (DrivenData, 2021).

Contributing

Read the CONTRIBUTING guide.

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Comments
  • Common goals!

    Common goals!

    Hi earthpulse folks!

    It looks we (mainly @adamjstewart, @isaaccorley and I) are working on a similar package to you all at https://github.com/microsoft/torchgeo. We're trying to implement a production quality package that includes dataloaders for common earth observation datasets (largely building off of @isaaccorley's massive effort at https://github.com/isaaccorley/torchrs), generic composable dataloaders for different types of remotely sensed imagery, and a pytorch lightning based training script for generating benchmark results / pretrained model weights. I was wondering if you all have any interest in contributing?

    Best, Caleb

    opened by calebrob6 2
  • Contributions

    Contributions

    Hi,

    First of all, I really wanted to thank you all for your efforts in this repo. It's super useful and amazing to see dataloaders for new/standard EO Datasets. And the fact that it uses PyTorch and PyTorch-Lightning just makes development so much easier!

    I wanted to ask what were the guidelines for contributing? I really liked what you all did for EuroSat and I am interested in replicating that format for some other datasets. In particular I was thinking BigEarthNet as well as possible some open-source hyperspectral datasets.

    Do you all plan to have some plans for contributions from the public?

    Thanks again!

    opened by jejjohnson 2
Owner
earthpulse
Complex data, made easy
earthpulse
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