Comfortable ways to work with hyperspectral data sets. I.e. spatially or time-resolved spectra, or spectra with any other kind of information associated with each of the spectra. The spectra can be data as obtained in XRF, UV/VIS, Fluorescence, AES, NIR, IR, Raman, NMR, MS, etc. More generally, any data that is recorded over a discretized variable, e.g. absorbance = f (wavelength), stored as a vector of absorbance values for discrete wavelengths is suitable.
| License | GPL 3.0 |
|---|---|
| Tags | rlangcran |
| HomePage | http://hyperSpec.r-forge.r-project.org/ 🔍 Inspect URL |
| Ranking | #296886 in MvnRepository (See Top Artifacts) |
| Used By | 1 artifacts |
| Version ▼ | Vulnerabilities | Repository | Usages | Date | |
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0.99.x | 0.99-20180627-b2 | BeDataDriven | May 01, 2022 | ||
| 0.99-20171005-b15 | BeDataDriven |
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| 0.99-20171005-b14 | BeDataDriven |
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| 0.99-20171005-b12 | BeDataDriven |
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| 0.99-20171005-b9 | BeDataDriven | May 01, 2022 |
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