Remote Sensing Data Analysis in R 🛰
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Updated
Nov 12, 2024 - R
Remote Sensing Data Analysis in R 🛰
List of resources for mineral exploration and machine learning, generally with useful code and examples.
Spectral endmembers and unmixing tools for satellite land cover mapping.
Processing of HSIs: spectral unmixing and classification.
MLNMF: Multilayer Nonnegative Matrix Factorization
Data and MATLAB code for the simulations of [R. Arablouei, “Spectral unmixing with perturbed endmembers,” submitted to the IEEE Transactions on Geoscience and Remote Sensing, 2017.]
Pipeline for remotely sensed imagery. The pipeline processes satellite imagery alongside auxiliary data in multiple steps to arrive at a set of trend files related to land-cover changes.
Decoding and analysis software for MRBLEs (Microspheres with Ratiometric Barcode Lanthanide Encoding).
This toolbox allows the implementation of the Diffusion and Volume maximization-based Image Clustering algorithm for unsupervised hyperspectral image clustering. See "README.md" for more information. Copyright: Sam L. Polk, 2023.
Analysis of the reflectance spectra from paintings: classification and endmembers.
Classifying the materials of individual pixels taken by satellite using Spectral Unmixing and Pixel Classification.
It is possible to predict the spectrum of e.g. a nucleobase in a nucleoside-nucleobase conversion.
A high resolution tool for snow cover reconstruction studies
My semester project for the course 'Machine Learning and Computational Statistics' during my studies in MSc in Data Science, AUEB.
compare two-point UV/Vis spectroscopy read-out with spectral unmixing
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