Datasets:
The dataset viewer is not available for this split.
Error code: RowsPostProcessingError
Need help to make the dataset viewer work? Make sure to review how to configure the dataset viewer, and open a discussion for direct support.
Dataset Card — AgroGate_SAR2NDVI_With_TIMESERIES
Dataset Summary
AgroGate_SAR2NDVI_With_TIMESERIES is a geospatial dataset containing paired SAR and NDVI satellite images of paddy fields collected across multiple growth stages within a single cultivation season. Each SAR–NDVI pair is captured as close in time as possible (±7 days) to ensure accurate spectral correspondence, and several such pairs are included per paddy lifecycle (typically 3–4 months).
The dataset supports time-series analysis of crop dynamics, SAR-optical fusion, and digital twin applications in precision agriculture.
Developed as part of the AgroGate Project, which builds a digital twin of Sri Lanka’s agricultural landscape using AI and remote sensing.
Dataset Structure
Root directory:
AgroGate_SAR2NDVI_With_TIMESERIES/
└── 2023/
├── NDVI/
│ ├── 2023_yala_76_stage1_NDVI.tif
│ ├── 2023_yala_76_stage2_NDVI.tif
│ ├── 2023_yala_76_stage3_NDVI.tif
│ ├── 2023_yala_76_stage4_NDVI.tif
│ └── 2023_yala_76_stage5_NDVI.tif
│
├── SAR/
│ ├── 2023_yala_76_stage1_SAR.tif
│ ├── 2023_yala_76_stage2_SAR.tif
│ ├── 2023_yala_76_stage3_SAR.tif
│ ├── 2023_yala_76_stage4_SAR.tif
│ └── 2023_yala_76_stage5_SAR.tif
│
├── Plots/
│ ├── 2023_yala_76_stage1_composite.png
│ ├── 2023_yala_76_stage2_composite.png
│ ├── ...
│
└── metadata.csv
Data Description
| Field | Type | Description |
|---|---|---|
field_id |
string | Identifier for the paddy field (e.g., 76) |
season |
string | Season name (e.g., Yala 2023) |
stage |
string | Growth stage name (stage1–stage5) |
sar_image |
GeoTIFF | Sentinel-1 SAR image of the field |
ndvi_image |
GeoTIFF | Sentinel-2 NDVI image of the same field |
plot_image |
PNG | Optional visualization combining both |
acquisition_date_sar |
date | Date of SAR acquisition |
acquisition_date_ndvi |
date | Date of NDVI acquisition |
time_diff_days |
integer | Temporal gap (days) between SAR and NDVI |
roi_center |
coordinates | Latitude/longitude of field center |
resolution |
int | Image resolution (10 m) |
tile_size_m |
float | Tile width/height (≈1280 m) |
Example Metadata Entry
field_id,season,stage,sar_image,ndvi_image,acquisition_date_sar,acquisition_date_ndvi,time_diff_days
76,Yala_2023,stage4,2023/ SAR/2023_yala_76_stage4_SAR.tif,2023/ NDVI/2023_yala_76_stage4_NDVI.tif,2023-08-12,2023-08-10,2
Data Splits
| Split | Description |
|---|---|
train |
70% of fields |
validation |
15% of fields |
test |
15% of fields |
Usage Example
from datasets import load_dataset
import rasterio
dataset = load_dataset("SanuthK/AgroGate_SAR2NDVI_With_TIMESERIES")
sample = dataset["train"][0]
sar_path = sample["sar_image"]
ndvi_path = sample["ndvi_image"]
with rasterio.open(sar_path) as src:
sar = src.read(1)
with rasterio.open(ndvi_path) as src:
ndvi = src.read(1)
print(sample["stage"], sample["time_diff_days"])
Dataset Creation
🛰 Source Data
SAR: Sentinel-1 GRD (VV/VH polarization)
NDVI: Derived from Sentinel-2 Level-2A (10 m bands)
- NDVI = (B8 - B4) / (B8 + B4)
- Cloud-masked using Sentinel-2 Scene Classification Layer (SCL)
🌾 Temporal Pairing
SAR and NDVI images paired within ±7 days
Each field includes 4–5 such pairs, spaced ~3–4 weeks apart
Each pair represents a growth stage:
- Stage 1: Land preparation
- Stage 2: Early vegetative
- Stage 3: Reproductive
- Stage 4: Ripening
- Stage 5: Harvest
🗺 Spatial Tile Extraction
- Centered on identified paddy field locations
- Circular buffer of 640 m radius (≈1.28 km tile)
- Clipped to bounding box and exported at 10 m scale
License
CC-BY 4.0 — You may share and adapt with attribution.
Citation
@dataset{agrogate_sar2ndvi_with_timeseries_2025,
title = {AgroGate_SAR2NDVI_With_TIMESERIES},
author = {Wanniarachchi S. K. and Weerakoon D.S.K},
year = {2025},
publisher = {Hugging Face Datasets},
license = {CC-BY 4.0},
url = {https://huggingface.co/datasets/SanuthK/AgroGate_SAR2NDVI_With_TIMESERIES}
}
Acknowledgements
Developed under the AgroGate Project, an initiative by AgroGate Team to create a no-code, AI-powered digital twin platform for Sri Lankan agriculture. Built using Sentinel-1 and Sentinel-2 imagery, this dataset forms the foundation for modeling paddy growth stages and supporting sustainable farming decisions.
- Downloads last month
- 10