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- Added SKILL.md with installation, quick start, core concepts, workflows - Added 12 reference documentation files covering 70+ topics - Includes 500+ code examples across 7 programming languages - Covers remote sensing, GIS, ML/AI, 30+ scientific domains - MIT License Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com> Co-Authored-By: Dr. Umair Rabbani <umairrs@gmail.com>
9.5 KiB
9.5 KiB
Multi-Language Geospatial Programming
Geospatial programming across 7 languages: R, Julia, JavaScript, C++, Java, Go, and Python.
R Geospatial
sf (Simple Features)
library(sf)
library(dplyr)
library(ggplot2)
# Read spatial data
roads <- st_read("roads.shp")
zones <- st_read("zones.geojson")
# Basic operations
st_crs(roads) # Check CRS
roads_utm <- st_transform(roads, 32610) # Reproject
# Geometric operations
roads_buffer <- st_buffer(roads, dist = 100) # Buffer
roads_simplify <- st_simplify(roads, tol = 0.0001) # Simplify
roads_centroid <- st_centroid(roads) # Centroid
# Spatial joins
joined <- st_join(roads, zones, join = st_intersects)
# Overlay
intersection <- st_intersection(roads, zones)
# Plot
ggplot() +
geom_sf(data = zones, fill = NA) +
geom_sf(data = roads, color = "blue") +
theme_minimal()
# Calculate area
zones$area <- st_area(zones) # In CRS units
zones$area_km2 <- st_area(zones) / 1e6 # Convert to km2
terra (Raster Processing)
library(terra)
# Load raster
r <- rast("elevation.tif")
# Basic info
r
ext(r) # Extent
crs(r) # CRS
res(r) # Resolution
# Raster calculations
slope <- terrain(r, v = "slope")
aspect <- terrain(r, v = "aspect")
# Multi-raster operations
ndvi <- (s2[[8]] - s2[[4]]) / (s2[[8]] + s2[[4]])
# Focal operations
focal_mean <- focal(r, w = matrix(1, 3, 3), fun = mean)
focal_sd <- focal(r, w = matrix(1, 5, 5), fun = sd)
# Zonal statistics
zones <- vect("zones.shp")
zonal_mean <- zonal(r, zones, fun = mean)
# Extract values at points
points <- vect("points.shp")
values <- extract(r, points)
# Write output
writeRaster(slope, "slope.tif", overwrite = TRUE)
R Workflows
# Complete land cover classification
library(sf)
library(terra)
library(randomForest)
library(caret)
# 1. Load data
training <- st_read("training.shp")
s2 <- rast("sentinel2.tif")
# 2. Extract training data
training_points <- st_centroid(training)
values <- extract(s2, training_points)
# 3. Combine with labels
df <- data.frame(values)
df$class <- as.factor(training$class_id)
# 4. Train model
set.seed(42)
train_index <- createDataPartition(df$class, p = 0.7, list = FALSE)
train_data <- df[train_index, ]
test_data <- df[-train_index, ]
rf_model <- randomForest(class ~ ., data = train_data, ntree = 100)
# 5. Predict
predicted <- predict(s2, model = rf_model)
# 6. Accuracy
conf_matrix <- confusionMatrix(predict(rf_model, test_data), test_data$class)
print(conf_matrix)
# 7. Export
writeRaster(predicted, "classified.tif", overwrite = TRUE)
Julia Geospatial
ArchGDAL.jl
using ArchGDAL
using GeoInterface
# Register drivers
ArchGDAL.registerdrivers() do
# Read shapefile
data = ArchGDAL.read("countries.shp") do dataset
layer = dataset[1]
features = []
for feature in layer
geom = ArchGDAL.getgeom(feature)
push!(features, geom)
end
features
end
end
# Create geometries
using GeoInterface
point = GeoInterface.Point(-122.4, 37.7)
polygon = GeoInterface.Polygon([GeoInterface.LinearRing([
GeoInterface.Point(-122.5, 37.5),
GeoInterface.Point(-122.3, 37.5),
GeoInterface.Point(-122.3, 37.8),
GeoInterface.Point(-122.5, 37.8),
GeoInterface.Point(-122.5, 37.5)
])])
# Geometric operations
buffered = GeoInterface.buffer(point, 1000)
intersection = GeoInterface.intersection(poly1, poly2)
GeoStats.jl
using GeoStats
using GeoStatsBase
using Variography
# Load point data
data = georef((value = [1.0, 2.0, 3.0],),
[Point(0.0, 0.0), Point(1.0, 0.0), Point(0.5, 1.0)])
# Experimental variogram
γ = variogram(EmpiricalVariogram, data, :value, maxlag = 1.0)
# Fit theoretical variogram
γfit = fit(EmpiricalVariogram, γ, SphericalVariogram)
# Ordinary kriging
problem = OrdinaryKriging(data, :value, γfit)
solution = solve(problem)
# Simulate
simulation = SimulationProblem(data, :value, SphericalVariogram, 100)
result = solve(simulation)
JavaScript (Node.js & Browser)
Turf.js (Browser/Node)
// npm install @turf/turf
const turf = require('@turf/turf');
// Create features
const pt1 = turf.point([-122.4, 37.7]);
const pt2 = turf.point([-122.3, 37.8]);
// Distance (in kilometers)
const distance = turf.distance(pt1, pt2, { units: 'kilometers' });
// Buffer
const buffered = turf.buffer(pt1, 5, { units: 'kilometers' });
// Bounding box
const bbox = turf.bbox(buffered);
// Along a line
const line = turf.lineString([[-122.4, 37.7], [-122.3, 37.8]]);
const along = turf.along(line, 2, { units: 'kilometers' });
// Within
const points = turf.points([
[-122.4, 37.7],
[-122.35, 37.75],
[-122.3, 37.8]
]);
const polygon = turf.polygon([[[-122.4, 37.7], [-122.3, 37.7], [-122.3, 37.8], [-122.4, 37.8], [-122.4, 37.7]]]);
const ptsWithin = turf.pointsWithinPolygon(points, polygon);
// Nearest point
const nearest = turf.nearestPoint(pt1, points);
// Area
const area = turf.area(polygon); // square meters
Leaflet (Web Mapping)
// Initialize map
const map = L.map('map').setView([37.7, -122.4], 13);
// Add tile layer
L.tileLayer('https://{s}.tile.openstreetmap.org/{z}/{x}/{y}.png', {
attribution: '© OpenStreetMap contributors'
}).addTo(map);
// Add GeoJSON layer
fetch('data.geojson')
.then(response => response.json())
.then(data => {
L.geoJSON(data, {
style: function(feature) {
return { color: feature.properties.color };
},
onEachFeature: function(feature, layer) {
layer.bindPopup(feature.properties.name);
}
}).addTo(map);
});
// Add markers
const marker = L.marker([37.7, -122.4]).addTo(map);
marker.bindPopup("Hello!").openPopup();
// Draw circles
const circle = L.circle([37.7, -122.4], {
color: 'red',
fillColor: '#f03',
fillOpacity: 0.5,
radius: 500
}).addTo(map);
C++ Geospatial
GDAL C++ API
#include "gdal_priv.h"
#include "ogr_api.h"
#include "ogr_spatialref.h"
// Open raster
GDALDataset *poDataset = (GDALDataset *) GDALOpen("input.tif", GA_ReadOnly);
// Get band
GDALRasterBand *poBand = poDataset->GetRasterBand(1);
// Read data
int nXSize = poBand->GetXSize();
int nYSize = poBand->GetYSize();
float *pafScanline = (float *) CPLMalloc(sizeof(float) * nXSize);
poBand->RasterIO(GF_Read, 0, 0, nXSize, 1,
pafScanline, nXSize, 1, GDT_Float32, 0, 0);
// Vector data
GDALDataset *poDS = (GDALDataset *) GDALOpenEx("roads.shp",
GDAL_OF_VECTOR, NULL, NULL, NULL);
OGRLayer *poLayer = poDS->GetLayer(0);
OGRFeature *poFeature;
poLayer->ResetReading();
while ((poFeature = poLayer->GetNextFeature()) != NULL) {
OGRGeometry *poGeometry = poFeature->GetGeometryRef();
// Process geometry
OGRFeature::DestroyFeature(poFeature);
}
GDALClose(poDS);
Java Geospatial
GeoTools
import org.geotools.data.FileDataStore;
import org.geotools.data.FileDataStoreFinder;
import org.geotools.data.simple.SimpleFeatureCollection;
import org.geotools.data.simple.SimpleFeatureIterator;
import org.geotools.data.simple.SimpleFeatureSource;
import org.geotools.geometry.jts.JTS;
import org.geotools.referencing.CRS;
import org.opengis.feature.simple.SimpleFeature;
import org.opengis.referencing.crs.CoordinateReferenceSystem;
import org.locationtech.jts.geom.Coordinate;
import org.locationtech.jts.geom.GeometryFactory;
import org.locationtech.jts.geom.Point;
// Load shapefile
File file = new File("roads.shp");
FileDataStore store = FileDataStoreFinder.getDataStore(file);
SimpleFeatureSource featureSource = store.getFeatureSource();
// Read features
SimpleFeatureCollection collection = featureSource.getFeatures();
try (SimpleFeatureIterator iterator = collection.features()) {
while (iterator.hasNext()) {
SimpleFeature feature = iterator.next();
Geometry geom = (Geometry) feature.getDefaultGeometryProperty().getValue();
// Process geometry
}
}
// Create point
GeometryFactory gf = new GeometryFactory();
Point point = gf.createPoint(new Coordinate(-122.4, 37.7));
// Reproject
CoordinateReferenceSystem sourceCRS = CRS.decode("EPSG:4326");
CoordinateReferenceSystem targetCRS = CRS.decode("EPSG:32633");
MathTransform transform = CRS.findMathTransform(sourceCRS, targetCRS);
Geometry reprojected = JTS.transform(point, transform);
Go Geospatial
Simple Features Go
package main
import (
"fmt"
"github.com/paulmach/orb"
"github.com/paulmach/orb/geojson"
"github.com/paulmach/orb/planar"
)
func main() {
// Create point
point := orb.Point{122.4, 37.7}
// Create linestring
line := orb.LineString{
{122.4, 37.7},
{122.3, 37.8},
}
// Create polygon
polygon := orb.Polygon{
{{122.4, 37.7}, {122.3, 37.7}, {122.3, 37.8}, {122.4, 37.8}, {122.4, 37.7}},
}
// GeoJSON feature
feature := geojson.NewFeature(polygon)
feature.Properties["name"] = "Zone 1"
// Distance (planar)
distance := planar.Distance(point, orb.Point{122.3, 37.8})
// Area
area := planar.Area(polygon)
fmt.Printf("Distance: %.2f meters\n", distance)
fmt.Printf("Area: %.2f square meters\n", area)
}
For more code examples across all languages, see code-examples.md.