OmniWaterMask is a Python library for high accuracy water segmentation in high to moderate resolution satellite imagery, supporting a wide range of resolutions, sensors, and processing levels.
The OmniWaterMask paper is now published 🎉
- Process imagery resolutions from 0.2 m to 50 m.
- Any imagery processing level
- Only requires Red, Green, Blue and NIR bands
- Known to work well with Sentinel-2, Landsat 8, PlanetScope, Maxar and NAIP
OmniWaterMask integrates a sensor agnostic deep learning segmentation model with NDWI and vector datasets to detect water bodies within remote sensing products.
To use OmniWaterMask, you need to install the package. It is recommended to use an environment manager such as conda or uv to avoid conflicts with other packages.
pip install omniwatermaskuv add omniwatermaskconda create -n owm python=3.12
conda activate owm
conda install -c conda-forge omniwatermaskpip install git+https://github.com/DPIRD-DMA/OmniWaterMask.gitTo predict a water mask for a list of scenes simply pass a list of geotiff files to the make_water_mask function along with the band order for the Red, Green, Blue and NIR bands. Predictions are saved to disk along side the input as geotiffs, a list of prediction file paths is returned:
from pathlib import Path
from omniwatermask import make_water_mask
scene_paths = [Path("path/to/scene1.tif"), Path("path/to/scene2.tif")]
# Predict water masks for scenes
water_mask_path = make_water_mask(
scene_paths=[scene_paths], # you can pass a list of images
band_order=[1, 2, 3, 4], # band order of the input images, expects RGB+NIR
)- Output classes are:
- 0 = Non-water
- 1 = water
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OWM requires an active internet connection to function properly, as it needs to download OpenStreetMap (OSM) data.
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Hardware acceleration is strongly recommended:
- NVIDIA GPU
- Apple Silicon Mac
- Other PyTorch-compatible accelerators
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Consider enabling "bf16" inference_dtype on compatible hardware - this typically results in faster processing speeds.
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If experiencing VRAM limitations even with batch_size=1, switching the 'mosaic_device' parameter to 'cpu' can help.
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Improve accuracy by providing known water body locations as 'aux_vector_sources' - simply pass a list of file paths pointing to your water polygon datasets.
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Reduce false positives by including vector data for common misidentification sources (buildings, roads) through the 'aux_negative_vector_sources' parameter.
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When working with scenes containing no-data regions, explicitly set the 'no_data_value' parameter to ensure proper handling of these areas.
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scene_paths: List of paths or single path (supports both Path and string types) to the input satellite/aerial imagery -
band_order: List of integers specifying the band order for input imagery (e.g., [1,2,3,4] if your input image is stored with band order red, green, blue then NIR data). This tells OWM which bands correspond to Red, Green, Blue, and Near-Infrared channels -
batch_size: Number of patches processed simultaneously during inference. Default is 1, increase for better GPU utilization -
version: Version identifier for the output files. Defaults to current OmniWaterMask version -
output_dir: Optional path for output files. If not specified, outputs are saved alongside input files -
mosaic_device: Device for mosaic operations ("cpu", "cuda" or "mps"). Defaults to system's default device -
inference_device: Device for model inference ("cpu", "cuda" or "mps"). Defaults to system's default device -
aux_vector_sources: List of paths to supplementary water body vector data to aid detection -
aux_negative_vector_sources: List of paths to vector data marking areas commonly misidentified as water -
inference_dtype: Data type for inference operations. Defaults to torch.float32 -
no_data_value: Value indicating no-data regions in the input imagery. Defaults to 0 -
inference_patch_size: Size of image patches for inference. Defaults to 1000 pixels -
inference_overlap_size: Overlap between adjacent patches during inference. Defaults to 300 pixels -
overwrite: Whether to overwrite existing output files. Defaults to True -
use_cache: Whether to cache vector data processing results. Defaults to True -
use_osm_building: Whether to use OpenStreetMap building data to reduce false positives. Defaults to True -
use_osm_roads: Whether to use OpenStreetMap road data to reduce false positives. Defaults to True -
cache_dir: Directory for storing cached vector data. Defaults to "OWM_cache" in current directory -
destination_model_dir: Directory to save the model weights. Defaults to None -
model_download_source: Source from which to download the model weights. Defaults to "hugging_face", can also be "google_drive".
Example notebooks are available in the examples/ directory:
- NAIP example — Water segmentation on NAIP aerial imagery from HuggingFace
- Sentinel-2 example — Water segmentation on a Sentinel-2 mosaic using s2mosaic
See CHANGELOG.md for a full list of changes across versions.
Contributions are welcome! Please submit a pull request or open an issue to discuss any changes.
This project is licensed under the MIT License
Special thanks to the S1S2-Water dataset authors and The FLAIR #1 dataset authors for providing the valuable training datasets.