Efficiency of the spectral-spatial classification of hyperspectral imaging data
- Authors: Borzov S.M.1, Potaturkin O.I.1,2
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Affiliations:
- Institute of Automation and Electrometry, Siberian Branch
- Novosibirsk State University
- Issue: Vol 53, No 1 (2017)
- Pages: 26-34
- Section: Analysis and Synthesis of Signals and Images
- URL: https://journals.rcsi.science/8756-6990/article/view/212062
- DOI: https://doi.org/10.3103/S8756699017010058
- ID: 212062
Cite item
Abstract
The efficiency of methods of the spectral-spatial classification of similarly looking types of vegetation on the basis of hyperspectral data of remote sensing of the Earth, which take into account local neighborhoods of analyzed image pixels, is experimentally studied. Algorithms that involve spatial pre-processing of the raw data and post-processing of pixel-based spectral classification maps are considered. Results obtained both for a large-size hyperspectral image and for its test fragment with different methods of training set construction are reported. The classification accuracy in all cases is estimated through comparisons of ground-truth data and classification maps formed by using the compared methods. The reasons for the differences in these estimates are discussed.
About the authors
S. M. Borzov
Institute of Automation and Electrometry, Siberian Branch
Author for correspondence.
Email: borzov@iae.nsk.su
Russian Federation, pr. Akademika Koptyuga 1, Novosibirsk, 630090
O. I. Potaturkin
Institute of Automation and Electrometry, Siberian Branch; Novosibirsk State University
Email: borzov@iae.nsk.su
Russian Federation, pr. Akademika Koptyuga 1, Novosibirsk, 630090; ul. Pirogova 2, Novosibirsk, 630090
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