R package: Misc. Functions for Processing and Sample Selection of Spectroscopic Data
-
Updated
May 18, 2026 - R
R package: Misc. Functions for Processing and Sample Selection of Spectroscopic Data
resemble is an R package for similarity-based modelling and local learning in spectroscopy. It provides tools for dissimilarity computation, nearest-neighbour search, memory-based learning, and spectral library optimisation (methods designed for large, heterogeneous spectral datasets where global models underperform)
R scripts for predicting soil organic carbon using soil spectral library from visible, near-infrared and shortwave-infrared (VNIR) and middle-infrared (MIR) using LASSO and PLS regression methods and the target-oriented cross-validation strategy.
A Python package for handling soil spectroscopy data, with a focus on the Open Soil Spectral Library (OSSL).
Prediction of Exchangeable Potassium in Soil through Mid-Infrared Spectroscopy and Deep Learning: from Prediction to Explainability, Albinet et al., 2022
Soil VIS-NIR reflectance spectra simulation based on generative model. PROSAIL model is integrated..
Functions to analyse mid infrared spectra of peat samples
Comparing different data preprocessing methods to predict soil organic carbon content on soil spectra features
Provides Scikit-Learn compatible transforms for spectroscopic data preprocessing.
Provides supervised variational autoencoders (VAE), i.e. deep learning models for regression with high-dimensional predictors, such as visible, near-infrared, and shortwave infrared (VIS–NIR–SWIR) soil spectroscopy data.
Soil spectral modelling, visualization and prediction · soilVAE + OSSL v1.2 · VisNIR & MIR
Add a description, image, and links to the soil-spectroscopy topic page so that developers can more easily learn about it.
To associate your repository with the soil-spectroscopy topic, visit your repo's landing page and select "manage topics."