WETLAND CHANGE DETECTION USING SENTINEL-2 IN THE PART OF LATVIA
DOI:
https://doi.org/10.17770/etr2023vol1.7305Keywords:
Wetlands, raised bogs, Sentinel-2, Semi-supervised classification, K-means, credibilityAbstract
In the article, the possible impact of changes on wetland were analysed by the semi-supervised classification method of statistical analysis. The Sentinel-2 raw data between two different seasons are combined together. The data preparation is shortly described in the article. Data is clustered with unsupervised method. The article describes a supervised method – how data credibility and classification can be estimated if its reference is poor quality.
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References
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