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--- |
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license: mit |
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--- |
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# Flood Detection Dataset |
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## Quick Start |
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```python |
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# Example: Loading and filtering data for Dolo Ado in SE Ethiopia, one of the sites explored in our paper (4.17°N, 42.05°E) |
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import pandas as pd |
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import rasterio |
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# Load parquet data |
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df = pd.read_parquet('N03/N03E042/N03E042-post-processing.parquet') |
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# Apply recommended filters |
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filtered_df = df[ |
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(df.dem_metric_2 < 10) & |
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(df.soil_moisture_sca > 1) & |
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(df.soil_moisture_zscore > 1) & |
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(df.soil_moisture > 20) & |
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(df.temp > 0) & |
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(df.land_cover != 60) & |
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(df.edge_false_positives == 0) |
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] |
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# Load corresponding geotiff |
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with rasterio.open('N03/N03E042/N03E042-90m-buffer.tif') as src: |
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flood_data = src.read(1) # Read first band |
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``` |
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## Overview |
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This dataset provides flood detection data from satellite observations. Each geographic area is divided into 3° × 3° tiles (approximately 330km × 330km at the equator). |
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### What's in each tile? |
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1. **Parquet file** (post-processing.parquet): Contains detailed observations with timestamps, locations, and environmental metrics |
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2. **80-meter buffer geotiff** (80m-buffer.tif): Filtered flood extent with 80m safety buffer |
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3. **240-meter buffer geotiff** (240m-buffer.tif): Filtered flood extent with wider 240m safety buffer |
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In the geotiffs: |
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- **Value 2**: Pixels with flooding detected within the buffer distance (80m or 240m) |
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- **Value 1**: Default exclusion layer representing areas with potential false positives (rough terrain or arid regions) or false negatives (urban areas) |
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- **Value 0**: Areas without any flood detection and outside of our exclusion mask |
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## Finding Your Area of Interest |
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1. Identify the coordinates of your area |
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2. Round down to the nearest 3 degrees for both latitude and longitude |
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3. Use these as the filename. For example: |
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- For Dolo Ado (4.17°N, 42.05°E) |
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- Round down to (3°N, 42°E) |
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- Look for file `N03E042` in the `N03` folder |
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## Directory Structure |
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``` |
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├── N03 # Main directory by latitude |
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│ ├── N03E042 # Subdirectory for specific tile |
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│ │ ├── N03E042-post-processing.parquet # Tabular data |
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│ │ ├── N03E042-90m-buffer.parquet # Geotiff with 90m buffer |
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│ │ └── N03E042-240m-buffer.tif # Geotiff with 240m buffer |
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``` |
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## Data Description |
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### Parquet File Schema |
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| Column | Type | Description | Example Value | |
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|--------|------|-------------|---------------| |
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| year | int | Year of observation | 2023 | |
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| month | int | Month of observation | 7 | |
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| day | int | Day of observation | 15 | |
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| lat | float | Latitude of detection | 27.842 | |
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| lon | float | Longitude of detection | 30.156 | |
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| filename | str | Sentinel-1 source file | 'S1A_IW_GRDH_1SDV...' | |
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| land_cover | int | ESA WorldCover class | 40 | |
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| dem_metric_1 | float | Pixel slope | 2.5 | |
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| dem_metric_2 | float | Max slope within 240m | 5.8 | |
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| soil_moisture | float | LPRM soil moisture % | 35.7 | |
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| soil_moisture_zscore | float | Moisture anomaly | 2.3 | |
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| soil_moisture_sca | float | SCA soil moisture % | 38.2 | |
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| soil_moisture_sca_zscore | float | SCA moisture anomaly | 2.1 | |
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| temp | float | Avg daily min temp °C | 22.4 | |
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| edge_false_positives | int | Edge effect flag (0=no, 1=yes) | 0 | |
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### Land Cover Classes |
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Common values in the `land_cover` column: |
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- 10: Tree cover |
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- 20: Shrubland |
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- 30: Grassland |
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- 40: Cropland |
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- 50: Urban/built-up |
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- 60: Bare ground (typically excluded) |
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- 70: Snow/Ice |
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- 80: Permanent Water bodies (excluded in this dataset) |
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- 90: Wetland |
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## Recommended Filtering |
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To reduce false positives, apply these filters: |
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```python |
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recommended_filters = { |
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'dem_metric_2': '< 10', # Exclude steep terrain |
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'soil_moisture_sca': '> 1', # Ensure meaningful soil moisture |
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'soil_moisture_zscore': '> 1', # Above normal moisture |
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'soil_moisture': '> 20', # Sufficient moisture present |
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'temp': '> 0', # Above freezing |
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'land_cover': '!= 60', # Exclude bare ground |
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'edge_false_positives': '= 0' # Remove edge artifacts |
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} |
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``` |
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## Spatial Resolution |
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Current data resolution (as of Feb 24,2025): |
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- ✅ Global geotiffs: 20-meter resolution |
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- ✅ Africa parquet files: 20-meter resolution |
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- ⏳ Rest of world parquet files: 30-meter resolution |
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- Update to 20-meter expected later this year |
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## Common Issues and Solutions |
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1. **Edge Effects**: If you see suspicious linear patterns near tile edges, use the `edge_false_positives` filter |
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2. **Desert Areas**: Consider stricter soil moisture thresholds in arid regions |
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3. **Mountain Regions**: You may need to adjust `dem_metric_2` threshold based on your needs |
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## Known Limitations |
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- Detection quality may be reduced in urban areas and areas with dense vegetation cover |
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- While we try to control for false positives, certain soil types can still lead to false positives |
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## Citation |
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If you use this dataset, please cite our paper: https://arxiv.org/abs/2411.01411 |
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## Questions or Issues? |
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Please open an issue on our GitHub repository at https://github.com/microsoft/ai4g-flood or contact us at [[email protected]] |