Land cover and land use classification performance of machine learning algorithms in a boreal landscape using Sentinel-2 data
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Abstract
In recent years, the data science and remote sensing communities have started to align due to user-friendly programming tools, access to high-end consumer computing power, and the availability of free satellite data. In particular, publicly available data from the European Space Agency’s Sentinel missions have been used in various remote sensing applications. However, there is a lack of studies that utilize these data to assess the performance of machine learning algorithms in complex boreal landscapes. In this article, I compare the classification performance of four non-parametric algorithms: support vector machines (SVM), random forests (RF), extreme gradient boosting (Xgboost), and deep learning (DL). The…
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Authors
1Topics & keywords
Topics
Keywords
- Random forest
- Machine learning
- Land cover
- Support vector machine
- Algorithm
- Remote sensing
- Artificial intelligence
- Computer science
UN Sustainable Development Goals
- Life in Land
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