Datasets:
Tasks:
Image Classification
Sub-tasks:
multi-class-image-classification
Languages:
English
Size:
10K - 100K
License:
image array 3D | label class label 10 classes | filename stringlengths 17 50 |
|---|---|---|
[[[1387,1387,1388,1389,1390,1391,1391,1391,1390,1388,1386,1383,1379,1376,1373,1371,1371,1371,1373,13(...TRUNCATED) | 6PermanentCrop | PermanentCrop/PermanentCrop_2401.tif |
[[[1529,1529,1535,1543,1551,1559,1567,1576,1585,1593,1600,1606,1612,1616,1621,1625,1629,1634,1638,16(...TRUNCATED) | 6PermanentCrop | PermanentCrop/PermanentCrop_1006.tif |
[[[1091,1091,1090,1089,1088,1088,1088,1089,1090,1091,1092,1092,1093,1093,1093,1093,1093,1092,1092,10(...TRUNCATED) | 2HerbaceousVegetation | HerbaceousVegetation/HerbaceousVegetation_1025.tif |
[[[1221,1221,1220,1220,1219,1219,1219,1219,1219,1219,1219,1219,1219,1219,1219,1219,1219,1219,1219,12(...TRUNCATED) | 9SeaLake | SeaLake/SeaLake_1439.tif |
[[[1087,1087,1087,1086,1086,1085,1085,1085,1085,1086,1088,1089,1091,1093,1095,1097,1098,1099,1101,11(...TRUNCATED) | 8River | River/River_1052.tif |
[[[1157,1157,1157,1156,1156,1155,1155,1154,1154,1153,1153,1153,1152,1152,1152,1151,1151,1151,1150,11(...TRUNCATED) | 1Forest | Forest/Forest_2361.tif |
[[[1328,1328,1329,1330,1331,1332,1333,1333,1334,1335,1335,1336,1336,1337,1337,1338,1339,1340,1341,13(...TRUNCATED) | 2HerbaceousVegetation | HerbaceousVegetation/HerbaceousVegetation_244.tif |
[[[1268,1268,1267,1267,1266,1266,1266,1265,1265,1265,1265,1266,1266,1267,1268,1269,1270,1271,1272,12(...TRUNCATED) | 1Forest | Forest/Forest_1453.tif |
[[[1604,1604,1605,1607,1608,1610,1612,1613,1615,1616,1617,1618,1619,1620,1621,1622,1622,1623,1623,16(...TRUNCATED) | 0AnnualCrop | AnnualCrop/AnnualCrop_2822.tif |
[[[1712,1712,1712,1712,1713,1713,1714,1715,1717,1718,1720,1721,1722,1723,1724,1725,1725,1725,1725,17(...TRUNCATED) | 5Pasture | Pasture/Pasture_370.tif |
End of preview. Expand
in Data Studio
EuroSAT Multispectral (All 13 Sentinel-2 Bands)
Dataset Description
EuroSAT is a dataset for land use and land cover (LULC) classification using Sentinel-2 satellite imagery. This version contains all 13 Sentinel-2 spectral bands stored as uint16 arrays at 64x64 pixel resolution.
The dataset covers 10 land use/land cover classes across 26,998 geo-referenced images from 34 European countries.
- Source: https://zenodo.org/records/7711810
- DOI: 10.5281/zenodo.7711810
- License: MIT
- Paper: EuroSAT: A Novel Dataset and Deep Learning Benchmark for Land Use and Land Cover Classification
- RGB Version: giswqs/EuroSAT_RGB
Authors
Patrick Helber, Benjamin Bischke, Andreas Dengel, Damian Borth
Spectral Bands
Each image is a numpy array of shape (13, 64, 64) with dtype uint16. The 13 bands correspond to the Sentinel-2 spectral bands:
| Index | Band | Sentinel-2 Band | Wavelength (nm) | Resolution (m) |
|---|---|---|---|---|
| 0 | B01 | Coastal aerosol | 443 | 60 |
| 1 | B02 | Blue | 490 | 10 |
| 2 | B03 | Green | 560 | 10 |
| 3 | B04 | Red | 665 | 10 |
| 4 | B05 | Veg. Red Edge 1 | 705 | 20 |
| 5 | B06 | Veg. Red Edge 2 | 740 | 20 |
| 6 | B07 | Veg. Red Edge 3 | 783 | 20 |
| 7 | B08 | NIR | 842 | 10 |
| 8 | B08A | Narrow NIR | 865 | 20 |
| 9 | B09 | Water Vapour | 945 | 60 |
| 10 | B10 | SWIR - Cirrus | 1375 | 60 |
| 11 | B11 | SWIR 1 | 1610 | 20 |
| 12 | B12 | SWIR 2 | 2190 | 20 |
Note: All bands are resampled to 10m resolution (64x64 pixels) in the original dataset.
Dataset Structure
Splits
| Split | Examples |
|---|---|
| train | 18,880 |
| validation | 5,405 |
| test | 2,713 |
Classes
| Label | Class Name |
|---|---|
| 0 | AnnualCrop |
| 1 | Forest |
| 2 | HerbaceousVegetation |
| 3 | Highway |
| 4 | Industrial |
| 5 | Pasture |
| 6 | PermanentCrop |
| 7 | Residential |
| 8 | River |
| 9 | SeaLake |
Features
image:Array3D(shape=(13, 64, 64), dtype="uint16")— 13-band Sentinel-2 multispectral imagelabel:ClassLabel— Integer class label (0–9)filename:Value("string")— Original filename with class directory prefix
Usage
from datasets import load_dataset
import numpy as np
dataset = load_dataset("giswqs/EuroSAT_MS")
# Access training split
train = dataset["train"]
sample = train[0]
# Get multispectral image as numpy array
image = np.array(sample["image"], dtype=np.uint16) # shape: (13, 64, 64)
label = sample["label"]
filename = sample["filename"]
print(f"Image shape: {image.shape}, dtype: {image.dtype}")
print(f"Label: {label}, Filename: {filename}")
# Extract RGB bands (B04, B03, B02 = indices 3, 2, 1)
rgb = image[[3, 2, 1]] # shape: (3, 64, 64)
# Compute NDVI
red = image[3].astype(np.float32)
nir = image[7].astype(np.float32)
ndvi = (nir - red) / (nir + red + 1e-8)
Citation
@article{helber2019eurosat,
title={EuroSAT: A Novel Dataset and Deep Learning Benchmark for Land Use and Land Cover Classification},
author={Helber, Patrick and Bischke, Benjamin and Dengel, Andreas and Borth, Damian},
journal={IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing},
volume={12},
number={7},
pages={2217--2226},
year={2019},
doi={10.1109/JSTARS.2019.2918242},
publisher={IEEE}
}
- Downloads last month
- 6