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import os
import ee
import geemap
import json
import geopandas as gpd
import streamlit as st
import pandas as pd
from fastkml import kml
import geojson
ee_credentials = os.environ.get("EE")
os.makedirs(os.path.expanduser("~/.config/earthengine/"), exist_ok=True)
with open(os.path.expanduser("~/.config/earthengine/credentials"), "w") as f:
f.write(ee_credentials)
ee.Initialize()
def convert_3d_to_2d(geometry):
"""
Recursively convert any 3D coordinates in a geometry to 2D.
"""
if geometry.is_empty:
return geometry
if geometry.geom_type == 'Polygon':
return geojson.Polygon([[(x, y) for x, y, *_ in ring] for ring in geometry.coordinates])
elif geometry.geom_type == 'MultiPolygon':
return geojson.MultiPolygon([
[[(x, y) for x, y, *_ in ring] for ring in poly]
for poly in geometry.coordinates
])
elif geometry.geom_type == 'LineString':
return geojson.LineString([(x, y) for x, y, *_ in geometry.coordinates])
elif geometry.geom_type == 'MultiLineString':
return geojson.MultiLineString([
[(x, y) for x, y, *_ in line]
for line in geometry.coordinates
])
elif geometry.geom_type == 'Point':
x, y, *_ = geometry.coordinates
return geojson.Point((x, y))
elif geometry.geom_type == 'MultiPoint':
return geojson.MultiPoint([(x, y) for x, y, *_ in geometry.coordinates])
return geometry # Return unchanged if not a supported geometry type
def kml_to_geojson(kml_string):
k = kml.KML()
k.from_string(kml_string.encode('utf-8')) # Convert the string to bytes
features = list(k.features())
geojson_features = []
for feature in features:
geometry_2d = convert_3d_to_2d(feature.geometry)
geojson_features.append(geojson.Feature(geometry=geometry_2d))
geojson_data = geojson.FeatureCollection(geojson_features)
return geojson_data
def geojson_to_ee(geojson_data):
ee_object = geemap.geojson_to_ee(geojson_data)
return ee_object
# put title in center
st.markdown("""
<style>
h1 {
text-align: center;
}
</style>
""", unsafe_allow_html=True)
st.title("Mean NDVI Calculator")
# get the start and end date from the user
col = st.columns(2)
start_date = col[0].date_input("Start Date", value=pd.to_datetime('2021-01-01'))
end_date = col[1].date_input("End Date", value=pd.to_datetime('2021-01-30'))
start_date = start_date.strftime("%Y-%m-%d")
end_date = end_date.strftime("%Y-%m-%d")
max_cloud_cover = st.number_input("Max Cloud Cover", value=20)
# Get the geojson file from the user
uploaded_file = st.file_uploader("Upload KML/GeoJSON file", type=["geojson", "kml"])
# Read the KML file
if uploaded_file is None:
file_name = "Bhankhara_Df_11_he_5_2020-21.geojson"
st.write(f"Using default file: {file_name}")
data = gpd.read_file(file_name)
with open(file_name) as f:
str_data = f.read()
else:
st.write(f"Using uploaded file: {uploaded_file.name}")
file_name = uploaded_file.name
bytes_data = uploaded_file.getvalue()
str_data = bytes_data.decode("utf-8")
if file_name.endswith(".geojson"):
geojson_data = json.loads(str_data)
elif file_name.endswith(".kml"):
geojson_data = kml_to_geojson(str_data)
print(geojson_data)
# Read Geojson File
ee_object = geojson_to_ee(geojson_data)
# Filter data based on the date, bounds, cloud coverage and select NIR and Red Band
collection = ee.ImageCollection("COPERNICUS/S2_SR_HARMONIZED").filterBounds(ee_object).filter(ee.Filter.lt('CLOUDY_PIXEL_PERCENTAGE', max_cloud_cover)).filter(ee.Filter.date(start_date, end_date)).select(['B4', 'B8'])
# Print Number of Images in collection
# print("Number of images", collection.size().getInfo())
st.write(f"Number of images: {collection.size().getInfo()}")
# Calculate NDVI as Normalized Index
def calculate_ndvi(image):
ndvi = image.normalizedDifference(['B8', 'B4']).rename('NDVI')
return image.addBands(ndvi)
collection = collection.map(calculate_ndvi)
# Write Zonalstats into csv file
# out_dir = os.path.join("Output")
# out_NDVI_stats = os.path.join(out_dir, "tmp.csv")
# if not os.path.exists(out_dir):
# os.makedirs(out_dir)
geemap.zonal_stats(collection.select(["NDVI"]), ee_object, "tmp.csv", stat_type="mean", scale=10)
# Show the table
df = pd.read_csv("tmp.csv")
df = df.T
df = df.reset_index()
df = df.iloc[:-2]
df['index'] = pd.to_datetime(df['index'].apply(lambda x: x.split('_')[1].split('T')[0])).dt.strftime('%Y-%m-%d')
df.rename(columns={'index': 'Date', 0: 'Mean NDVI'}, inplace=True)
st.write(df)
# plot the time series
st.write("Time Series Plot")
st.line_chart(df.set_index('Date'))
st.write(f"Overall Mean NDVI: {df['Mean NDVI'].mean():.2f}") |