Affiliation:
1. Department of Computer Science and Computer Information Systems, Auburn University at Montgomery, Montgomery, AL 36117, USA
2. Department of Chemistry, Auburn University at Montgomery, Montgomery, AL 36117, USA
Abstract
Hyperspectral cameras collect detailed spectral information at each image pixel, contributing to the identification of image features. The rich spectral content of hyperspectral imagery has led to its application in diverse fields of study. This study focused on cloud classification using a dataset of hyperspectral sky images captured by a Resonon PIKA XC2 camera. The camera records images using 462 spectral bands, ranging from 400 to 1000 nm, with a spectral resolution of 1.9 nm. Our preliminary/unlabeled dataset comprised 33 parent hyperspectral images (HSI), each a substantial unlabeled image measuring 4402-by-1600 pixels. With the meteorological expertise within our team, we manually labeled pixels by extracting 10 to 20 sample patches from each parent image, each patch consisting of a 50-by-50 pixel field. This process yielded a collection of 444 patches, each categorically labeled into one of seven cloud and sky condition categories. To embed the inherent data structure while classifying individual pixels, we introduced an innovative technique to boost classification accuracy by incorporating patch-specific information into each pixel’s feature vector. The posterior probabilities generated by these classifiers, which capture the unique attributes of each patch, were subsequently concatenated with the pixel’s original spectral data to form an augmented feature vector. We then applied a final classifier to map the augmented vectors to the seven cloud/sky categories. The results compared favorably to the baseline model devoid of patch-origin embedding, showing that incorporating the spatial context along with the spectral information inherent in hyperspectral images enhances the classification accuracy in hyperspectral cloud classification. The dataset is available on IEEE DataPort.
Funder
National Science Foundation
Reference32 articles.
1. Hyperspectral imagery classification based on semi-supervised 3-D deep neural network and adaptive band selection;Sellami;Expert Syst. Appl.,2019
2. Lu, B., Dao, P., Lui, J., and He, Y. (2020). Recent Advances of Hyperspectral Imaging Technology and Applications in Agriculture. Remote Sens., 12.
3. HySpex (2024, May 31). Understanding Forests from A Hyperspectral Glance. Available online: https://www.hyspex.com/use-cases-application-notes/forestry-management/.
4. Application of airborne and spaceborne hyperspectral imaging techniques for atmospheric research: Past, present, and future;Calin;Appl. Spectrosc. Rev.,2021
5. The role of hyperspectral imaging: A literature review;Mateen;Int. J. Adv. Comput. Sci. Appl.,2018