This project is renamed to rs-fusion-datasets
fetch_houston2013 is renamed to rs-fusion-datasets, go to the new project for more datasets and latest features.
Download and load Houston 2013 Dataset, Trento dataset and Muufl dataset easily and swiftly. fetch_houston2013 is:
- A fast houston2013 muufl and trento dataset fetcher that automatically downloads all data
- A ready-to-use torch dataloader for houston2013 muufl and trento dataset
- A toolbox for visualizing the datasets
- install this package
pip install fetch-houston2013
- import and get the dataset
from fetch_houston2013 import fetch_houston2013, fetch_muufl, fetch_trento, split_spmatrix
# For Houston 2013
hsi, dsm, train_label, test_label, info = fetch_houston2013()
# For Muufl
casi, lidar, truth, info = fetch_muufl()
train_label, test_label = split_spmatrix(truth, 20)
# For Trento
casi, lidar, truth, info = fetch_trento()
train_label, test_label = split_spmatrix(truth, 20)
- Tips: train_label and test_label are sparse matrix, you can either convert them to np.array easily by
train_label=train_label.todense()
test_label =test_label.todense()
or directly use them for getting the value in a very fast way:
def __getitem__(self, index):
i = self.truth.row[index]
j = self.truth.col[index]
label = self.truth.data[index].item()
x_hsi = self.hsi[:, i, j]
x_dsm = self.dsm[:, i, j]
return x_hsi, x_dsm, label
A standard ready-to-use Torch vison dataset.
from fetch_houston2013 import Houston2013, Trento, Muufl
dataset = Muufl(subset='train', patch_size=11)
x_h, x_l, y, extras = dataset[0]
- lbl2rgb: convert the label dataset to rgb image
- read_roi: read exported
.txt
file of ENVI roi to sparse matrix - split_spmatrix: split a sparse to get the train dataset and test dataset
We welcome all contributions, including issues, pull requests, feature requests and discussions.
Houston2013 dataset: https://machinelearning.ee.uh.edu/?page_id=459
paperswithcode: https://paperswithcode.com/dataset/houston
Muufl dataset: https://github.com/GatorSense/MUUFLGulfport
Dafault url of Trento dataset is https://github.com/tyust-dayu/Trento/tree/b4afc449ce5d6936ddc04fe267d86f9f35536afd
The 2013_IEEE_GRSS_DF_Contest_Samples_VA.txt in this repo is exported from original 2013_IEEE_GRSS_DF_Contest_Samples_VA.roi.
Note: If this data is used in any publication or presentation the following reference must be cited:
P. Gader, A. Zare, R. Close, J. Aitken, G. Tuell, “MUUFL Gulfport Hyperspectral and LiDAR Airborne Data Set,” University of Florida, Gainesville, FL, Tech. Rep. REP-2013-570, Oct. 2013.
If the scene labels are used in any publication or presentation, the following reference must be cited:
X. Du and A. Zare, “Technical Report: Scene Label Ground Truth Map for MUUFL Gulfport Data Set,” University of Florida, Gainesville, FL, Tech. Rep. 20170417, Apr. 2017. Available: http://ufdc.ufl.edu/IR00009711/00001.
If any of this scoring or detection code is used in any publication or presentation, the following reference must be cited:
T. Glenn, A. Zare, P. Gader, D. Dranishnikov. (2016). Bullwinkle: Scoring Code for Sub-pixel Targets (Version 1.0) [Software]. Available from https://github.com/GatorSense/MUUFLGulfport/.
Copyright 2025 songyz2023
Licensed under the Apache License, Version 2.0 (the "License");
you may not use this file except in compliance with the License.
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http://www.apache.org/licenses/LICENSE-2.0
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