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- Title
Can I Trust My One-Class Classification?
- Authors
Mack, Benjamin; Roscher, Ribana; Waske, Bj¨orn
- Abstract
Contrary to binary and multi-class classifiers, the purpose of a one-class classifier for remote sensing applications is to map only one specific land use/land cover class of interest. Training these classifiers exclusively requires reference data for the class of interest, while training data for other classes is not required. Thus, the acquisition of reference data can be significantly reduced. However, one-class classification is fraught with uncertainty and full automatization is difficult, due to the limited reference information that is available for classifier training. Thus, a user-oriented one-class classification strategy is proposed, which is based among others on the visualization and interpretation of the one-class classifier outcomes during the data processing. Careful interpretation of the diagnostic plots fosters the understanding of the classification outcome, e.g., the class separability and suitability of a particular threshold. In the absence of complete and representative validation data, which is the fact in the context of a real one-class classification application, such information is valuable for evaluation and improving the classification. The potential of the proposed strategy is demonstrated by classifying different crop types with hyperspectral data from Hyperion.
- Subjects
ZONING; ACQUISITION of data; REMOTE sensing; VISUALIZATION; HYPERSPECTRAL imaging systems; BAYES' theorem
- Publication
Remote Sensing, 2014, Vol 6, Issue 9, p8779
- ISSN
2072-4292
- Publication type
Article
- DOI
10.3390/rs6098779