A versatile deep learning architecture for classification and label-free prediction of hyperspectral images

Volume: 3, Issue: 4, Pages: 306 - 315
Published: Mar 11, 2021
Abstract
Hyperspectral imaging is a technique that provides rich chemical or compositional information not regularly available to traditional imaging modalities such as intensity imaging or color imaging based on the reflection, transmission, or emission of light. Analysis of hyperspectral imaging often relies on machine learning methods to extract information. Here, we present a new flexible architecture, the U-within-U-Net, that can perform...
Paper Details
Title
A versatile deep learning architecture for classification and label-free prediction of hyperspectral images
Published Date
Mar 11, 2021
Volume
3
Issue
4
Pages
306 - 315
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