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A Python geospatial library for raster preprocessing, analysis, visualization, and modeling

Project description

Rasteric

Rasteric is a Python geospatial library designed for raster preprocessing, analysis, visualization, and modeling. It simplifies common GIS workflows with easy-to-use functions built on top of Rasterio and GeoPandas.

Installation

pip install rasteric

Dependencies are installed automatically:

  • rasterio, geopandas, shapely
  • numpy, pandas, matplotlib, scipy
  • scikit-learn, scikit-image
  • rasterstats, Pillow

Requirements

  • Python >= 3.8

Supported Data Formats

  • Raster: GeoTIFF, TIFF
  • Vector: Shapefiles, GeoJSON
  • Tabular: CSV with spatial attributes (latitude/longitude)

Typical Use Cases

  • Satellite image preprocessing (Sentinel-2, Landsat)
  • NDVI and vegetation analysis
  • Land-use / land-cover mapping
  • Agricultural monitoring
  • Raster-vector data extraction
  • Geospatial machine learning data preparation
  • Time-series crop monitoring
  • Change detection

Quick Start

from rasteric import (plot, clip, ndvi, evi, stack, extract, mosaic, calc,
                      change_detect, timeseries, cloudmask, classify, sample)

# Visualize
plot('sentinel2.tif', bands=(4, 3, 2), brightness_factor=4)

# Vegetation indices
ndvi('sentinel2.tif', 'ndvi.tif', red_band=3, nir_band=4)
evi('sentinel2.tif', 'evi.tif', nir_band=4, red_band=3, blue_band=2)

# Mosaic tiles
mosaic('tiles/', 'merged.tif')

# Band math
calc('(B8 - B4) / (B8 + B4)', inputs={'B8': 'nir.tif', 'B4': 'red.tif'}, output='ndvi.tif')

# Change detection
result = change_detect('ndvi_jan.tif', 'ndvi_jul.tif', 'change.tif', threshold=0.2)

# Time-series
df = timeseries('ndvi_folder/', output_csv='ndvi_ts.csv')

# Cloud masking (Sentinel-2)
cloudmask('sentinel2.tif', 'cloud_free.tif', method='scl')

# Classification
classify('image.tif', 'classes.tif', method='kmeans', n_clusters=5)

# ML training data
df = sample('sentinel2.tif', 'training.shp', 'samples.csv', label_column='class')

Functions

Vegetation Indices

Function Description
ndvi(raster, out, red, nir) Normalized Difference Vegetation Index
evi(raster, out, nir, red, blue) Enhanced Vegetation Index
savi(raster, out, nir, red, L) Soil-Adjusted Vegetation Index
ndwi(raster, out, green, swir) Normalized Difference Water Index
gndvi(raster, out, nir, green) Green NDVI (chlorophyll sensitivity)
ndmi(raster, out, nir, swir) Normalized Difference Moisture Index

Data Handling

Function Description
stack(folder, out) Stack multiple rasters into multi-band file
mosaic(folder, out, method) Merge raster tiles into one raster
mergecsv(path, out) Merge CSV files in a directory
clip(raster, shp, out) Clip raster by shapefile
reproject(raster, out, crs) Reproject to different CRS
resample(raster, out, factor) Resample to new resolution

Raster Calculator

Function Description
calc(expr, inputs, out) Band math with named inputs
bandmath(raster, equation, out) Band math with B1, B2, ...

Analysis

Function Description
zonalstats(raster, vector, stats) Zonal statistics for polygons
stats(raster) Basic statistics (min, max, mean, std)
fillnodata(raster, out) Fill NoData via interpolation

Time-Series & Change Detection

Function Description
timeseries(folder, out_csv, band, stat) Analyze raster time-series
change_detect(img1, img2, out, method, threshold) Detect changes between dates

Cloud Masking

Function Description
cloudmask(raster, out, method) Sentinel-2 cloud masking (QA60 or SCL)

Image Classification

Function Description
classify(raster, out, method, n_clusters) K-Means or Random Forest classification
texture(raster, out, band, properties) GLCM texture features

ML Preparation

Function Description
sample(raster, shp, out_csv, label) Extract training samples from raster
train_test_split(csv, test_size) Split samples into train/test sets

Extraction

Function Description
extract(data, shp, out_csv) Extract raster values at vector locations
align_to_shp(tif, shp, out) Reproject raster to match shapefile CRS

Visualization

Function Description
plot(file, bands, cmap, title, ax, brightness) Display raster with band selection
contour(file) Overlay contour lines
hist(file, bin, title) Histogram of pixel values
thumbnail(raster, out_png, bands, size) Quick PNG thumbnail

Conversion

Function Description
convras(raster, out_shp) Raster to vector polygons

Utilities

Function Description
convpath(path) Cross-platform path conversion
bandnames(raster, names) Update band descriptions
haversine(lon1, lat1, lon2, lat2) Great-circle distance

Sentinel-2

from rasteric import process_sen2

# Full pipeline: JP2→TIFF, resample, stack, cloud removal
process_sen2('source/', 'output/')

Contributing

License

MIT License

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