期刊论文详细信息
Geodetski Vestnik
Change detection work-flow for mapping changes from arable lands to permanent grasslands with advanced boosting methods
Přemysl Štych1  Jiří Šandera1 
[1] Faculty of Science, Department of Applied Geoinformatics and Cartography, Albertov 6, Prague 2, 128 43, Czech Republic;
关键词: Remote Sensing;    Machine Learning;    MAD;    Boosting;    AdaBoost;    Object-Based Image Analysis;   
DOI  :  10.15292/geodetski-vestnik.2019.03.379-394
来源: DOAJ
【 摘 要 】

The necessity of mapping changes in land cover categories based on satellite imageries is a challenging task especially in terms of arable land and grasslands. The phenological phases of arable lands change quickly while grasslands is more stable. It might be hard to capture these changes regarding the spectral overlap between crops in full growth and grass itself. We have introduced a relatively simple processing workflow with good efficiency and accuracy. Our proposed method utilises the combination of a Multivariate Alteration Change Detection Algorithm and an existing boosting method, such as the AdaBoost algorithm with different weak learners and the most recent one – Extreme Gradient Boosting that is actually a relatively new approach in remote sensing. According to the results, the highest overall accuracy is 89.51 %. The proposed process workflow was tested on Landsat data with 30 m spatial resolution, using open-source software: R and GRASS GIS, Orfeo Toolbox library.

【 授权许可】

Unknown   

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