Published December 24, 2021 | Version v1
Dataset Open

SITS-Former: A pre-trained spatio-spectral-temporal representation model for Sentinel-2 time series classifcation

Creators

  • 1. Nanjing University of Posts & Telecommunications

Description

This is the unlabeled dataset we introduced in the presented paper 'SITS-Former: A pre-trained spatio-spectral-temporal representation model for Sentinel-2 time series classifcation'. This dataset can be used to pre-train a specified deep learning model (such as SITS-Former, CNN-Transformer, ConvLSTM. etc) for patch-based Sentinel-2 time series classification.  

In this dataset, each sample corresponds to an unlabeled image patch time series, which is stored as a separate numpy file named 'unlabeled_XXX.npz'. You can use 'np.load' to open a saved '.npz' file and get two arrays (querid by "ts" and "doy") from the returned dictionary.  The code will be released at https://github.com/linlei1214/SITS-Former soon.

Files

Files (15.4 GB)

Name Size Download all
md5:5eff850050e04c733a6341b1e1760597
15.4 GB Download

Additional details

Related works

Is published in
Journal article: 10.1016/j.jag.2021.102651 (DOI)