SOME ASPECTS OF PROCESSING OF MULTICHANNEL REMOTE SENSING DATA USING NEURAL NETWORKS

Authors

DOI:

https://doi.org/10.30890/2709-2313.2023-19-02-001

Keywords:

Multichannel images, remote sensing, neural networks

Abstract

This chapter contains the results obtained during execution of Ukrainian-French Project within “Dnipro” framework in 2022 intended on design of methods and means for processing multichannel remote sensing data using the trained neural networks. Neural net

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References

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Published

2023-04-30

How to Cite

Ieremeiev, O., Vasilyeva, I., Makarichev, V., Rubel, O., Li, F., Chernova, G., Kovalenko, B., Benoit, V., & Lukin, V. (2023). SOME ASPECTS OF PROCESSING OF MULTICHANNEL REMOTE SENSING DATA USING NEURAL NETWORKS. European Science, 2(sge19-02), 7–60. https://doi.org/10.30890/2709-2313.2023-19-02-001

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