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  4. Active learning with SVM for land cover classification - what can go wrong?
 
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2016
Conference Paper
Title

Active learning with SVM for land cover classification - what can go wrong?

Abstract
Training machine learning algorithms for land cover classification is labour intensive. Applying active learning strategies tries to alleviate this, but can lead to unexpected results. We demonstrate what can go wrong when uncertainty sampling with an SVM is applied to real world remote sensing data. Possible causes and solutions are suggested.
Author(s)
Wuttke, Sebastian
Middelmann, Wolfgang  
Stilla, Uwe
Mainwork
AL@iKNOW 2016, Workshop on Active Learning: Applications, Foundations and Emerging Trends. Online resource  
Conference
Workshop on Active Learning - Applications, Foundations and Emerging Trends (AL) 2016  
International Conference on Knowledge Technologies and Data-Driven Business (i-KNOW) 2016  
DOI
10.24406/publica-fhg-393458
File(s)
N-418925.pdf (2.04 MB)
Rights
Under Copyright
Language
English
Fraunhofer-Institut für Optronik, Systemtechnik und Bildauswertung IOSB  
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