Geospatial & Remote Sensing Notes
These indices and articles compile core reference logs on coordinate reference systems, raster IO structures, state estimation algorithms (Kalman Filters) used in localization, and foundational hyperspectral physics.
📖 Key Reference Journals & Guides
- Bidhya's Geospatial Python Stack: Standard import guide and optimized reference codes for
GeoPandas,Rasterio,Rioxarray, andXarray. - Kalman Filter & LiDAR Fusion: State estimation mathematics, predict/update loop configurations, and vehicle localization sensor alignments.
- Hyperspectral Remote Sensing Theory: Differences between continuous narrow-band hyperspectral arrays (e.g., AVIRIS, PACE) vs discrete broad-band multispectral sensors.
Methodological Priorities
In geospatial workflows, my emphasis is on physical accuracy mixed with numerical efficiency:
* Grid Consistency: Handling mismatched spatial resolutions and projections using highly-parallelised rioxarray or gdal abstractions.
* Dynamic Range Correctness: Empirical satellite bias corrections using satellite altimetry footprints (e.g., ICESat-2) to validate Digital Elevation Models.