Added ndvi calculation.

This commit is contained in:
Felix Delattre 2025-12-19 11:05:35 +01:00
parent c02289532f
commit 129d98c57e
3 changed files with 114 additions and 11 deletions

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from download_s2 import download_s2
from download_s3 import download_s3
year = 2024
site_position = (47.116171, 11.320308)
site_name = "innsbruck"
print(f"Downloading data for {site_name}, {year}")
download_s2(year, site_position, site_name)
download_s3(year, site_position, site_name)
print("All downloads completed")

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ndvi.py Normal file
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import os
import json
import numpy as np
import rasterio
from rasterio.warp import transform as transform_coords
from pathlib import Path
from datetime import datetime
def generate_ndvi(year, site_position, site_name):
for source in ["s2", "s3"]:
input_dir = Path(f"data/{site_name}/{year}/{source}/")
output_dir = Path(f"data/{site_name}/{year}/ndvi/{source}/")
output_dir.mkdir(parents=True, exist_ok=True)
print(f"[NDVI-{source.upper()}] Processing {input_dir}...")
geotiff_files = sorted(input_dir.glob("*.geotiff"))
if not geotiff_files:
print(f"[NDVI-{source.upper()}] No files found")
continue
for geotiff_file in geotiff_files:
output_file = output_dir / geotiff_file.name
if output_file.exists():
print(f"[NDVI-{source.upper()}] Skipping {geotiff_file.name} (exists)")
continue
with rasterio.open(geotiff_file) as src:
red = src.read(3).astype(np.float32)
nir = src.read(4).astype(np.float32)
mask = (red > 0) & (nir > 0)
ndvi = np.zeros_like(red, dtype=np.float32)
ndvi[mask] = (nir[mask] - red[mask]) / (nir[mask] + red[mask])
profile = src.profile.copy()
profile.update(
{
"count": 1,
"dtype": "float32",
"nodata": 0,
"compress": "lzw",
}
)
with rasterio.open(output_file, "w", **profile) as dst:
dst.write(ndvi, 1)
dst.set_band_description(1, "NDVI")
print(f"[NDVI-{source.upper()}] Saved: {output_file}")
print(f"[NDVI-{source.upper()}] Completed")
def create_ndvi_timeseries(year, site_position, site_name):
for source in ["s2", "s3"]:
output_dir = Path(f"data/{site_name}/{year}/ndvi/{source}/")
print(f"[NDVI-{source.upper()}] Creating timeseries.json...")
timeseries = []
ndvi_files = sorted(output_dir.glob("*.geotiff"))
for ndvi_file in ndvi_files:
filename = ndvi_file.name
date_str = filename.split("_")[0]
try:
date = datetime.strptime(date_str, "%Y%m%d").isoformat()
except ValueError:
date = date_str
ndvi_value = None
try:
with rasterio.open(ndvi_file) as src:
lon, lat = site_position[1], site_position[0]
x, y = transform_coords("EPSG:4326", src.crs, [lon], [lat])
samples = list(src.sample([(x[0], y[0])]))
if samples and len(samples) > 0:
value = float(samples[0][0])
if value != 0 and not np.isnan(value):
ndvi_value = value
except Exception as e:
print(f"[NDVI-{source.upper()}] Warning: Could not sample {filename}: {e}")
timeseries.append({
"date": date,
"filename": filename,
"ndvi": ndvi_value
})
timeseries.sort(key=lambda x: x["date"])
timeseries_file = output_dir / "timeseries.json"
with open(timeseries_file, "w") as f:
json.dump(timeseries, f, indent=2)
print(f"[NDVI-{source.upper()}] Saved: {timeseries_file} ({len(timeseries)} entries)")

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run.py Normal file
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from download_s2 import download_s2
from download_s3 import download_s3
from ndvi import generate_ndvi, create_ndvi_timeseries
year = 2024
site_position = (47.116171, 11.320308)
site_name = "innsbruck"
# print(f"Downloading data for {site_name}, {year}")
# download_s2(year, site_position, site_name)
# download_s3(year, site_position, site_name)
# print("All downloads completed")
print(f"Generating NDVI for {site_name}, {year}")
# generate_ndvi(year, site_position, site_name)
create_ndvi_timeseries(year, site_position, site_name)
print("All NDVI generation completed")