The viewer is disabled because this dataset repo requires arbitrary Python code execution. Please consider
removing the
loading script
and relying on
automated data support
(you can use
convert_to_parquet
from the datasets
library). If this is not possible, please
open a discussion
for direct help.
π² AGBD: A Global-scale Biomass Dataset π³
Authors: Ghjulia Sialelli ([email protected]), Torben Peters, Jan Wegner, Konrad Schindler
π Usage
To get started with this dataset, use the following code snippet:
# Install the datasets library if you haven't already
!pip install datasets
# Import necessary modules
from datasets import load_dataset
# Load the dataset
dataset = load_dataset('prs-eth/AGBD', trust_remote_code=True, streaming=True)["train"] # Options: "train", "val", "test"
This code will load the dataset as an IterableDataset
. You can find more information on how to work with IterableDataset
objects in the Hugging Face documentation.
π Dataset Overview
Each sample in the dataset contains a pair of pre-cropped, pre-normalized images along with their corresponding biomass labels. For additional resources, including links to the preprocessed uncropped data, please visit the project page on GitHub.
βοΈ Load Dataset Options
The load_dataset
function provides the following configuration options:
normalize_data
:{True, False}
Whether to return normalized (0-1) data or raw values.additional_features
:[]
A list of additional features the dataset should include. Refer to the documentation below for more details.patch_size
:25
The size of the returned patch (in pixels). The maximum value is 25 pixels, which corresponds to 250 meters.
πΌοΈ Image Details
Each image consists of 24 channels, organized into the following categories:
Spectral Bands:
B01, B02, B03, B04, B05, B06, B07, B08, B8A, B09, B11, B12
Geographical Coordinates:
lat_cos, lat_sin, lon_cos, lon_sin
ALOS PALSAR Bands:
alos_hh, alos_hv
Canopy Heights:
ch, ch_std
Land Cover Information:
lc_cos, lc_sin, lc_prob
Digital Elevation Model (DEM):
dem
π Channel Structure
The channels are structured as follows:
(Spectral Bands) | (Geographical Coordinates) | (ALOS PALSAR Bands) | (Canopy Heights) | (Land Cover Information) | DEM
(B01 B02 B03 B04 B05 B06 B07 B08 B8A B09 B11 B12) | (lat_cos, lat_sin, lon_cos, lon_sin) | (alos_hh, alos_hv) | (ch, ch_std) | (lc_cos, lc_sin, lc_prob) | dem
β Additional Features
You can include a list of additional features from the options below in your dataset configuration:
"agbd_se"
- AGBD Standard Error: The uncertainty estimate associated with the aboveground biomass density prediction for each GEDI footprint."elev_lowes"
- Elevation: The height above sea level at the location of the GEDI footprint."leaf_off_f"
- Leaf-Off Flag: Indicates whether the measurement was taken during the leaf-off season, which can impact canopy structure data."pft_class"
- Plant Functional Type (PFT) Class: Categorization of the vegetation type (e.g., deciduous broadleaf, evergreen needleleaf)."region_cla"
- Region Class: The geographical area where the footprint is located (e.g., North America, South Asia)."rh98"
- RH98 (Relative Height at 98%): The height at which 98% of the returned laser energy is reflected, a key measure of canopy height."sensitivity"
- Sensitivity: The proportion of laser pulse energy reflected back to the sensor, providing insight into vegetation density and structure."solar_elev"
- Solar Elevation: The angle of the sun above the horizon at the time of measurement, which can affect data quality."urban_prop"
- Urban Proportion: The percentage of the footprint area that is urbanized, helping to filter or adjust biomass estimates in mixed landscapes."gedi_num_days"
- Date of GEDI Footprints: The specific date on which each GEDI footprint was captured, adding temporal context to the measurements."s2_num_days"
- Date of Sentinel-2 Image: The specific date on which each Sentinel-2 image was captured, ensuring temporal alignment with GEDI data."lat"
- Latitude: Latitude of the central pixel."lon"
- Longitude: Longitude of the central pixel.
- Downloads last month
- 99