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An Optimal Decision-Tree Design Strategy and Its Application to Sea Ice Classification from SAR Imagery

Permanent link
https://hdl.handle.net/10037/17044
DOI
https://doi.org/10.3390/rs11131574
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Date
2019-07-03
Type
Journal article
Tidsskriftartikkel
Peer reviewed

Author
Lohse, Johannes; Doulgeris, Anthony Paul; Dierking, Wolfgang Fritz Otto
Abstract
We introduce the fully automatic design of a numerically optimized decision-tree algorithm and demonstrate its application to sea ice classification from SAR data. In the decision tree, an initial multi-class classification problem is split up into a sequence of binary problems. Each branch of the tree separates one single class from all other remaining classes, using a class-specific selected feature set. We optimize the order of classification steps and the feature sets by combining classification accuracy and sequential search algorithms, looping over all remaining features in each branch. The proposed strategy can be adapted to different types of classifiers and measures for the class separability. In this study, we use a Bayesian classifier with non-parametric kernel density estimation of the probability density functions. We test our algorithm on simulated data as well as airborne and spaceborne SAR data over sea ice. For the simulated cases, average per-class classification accuracy is improved between 0.5% and 4% compared to traditional all-at-once classification. Classification accuracy for the airborne and spaceborne SAR datasets was improved by 2.5% and 1%, respectively. In all cases, individual classes can show larger improvements up to 8%. Furthermore, the selection of individual feature sets for each single class can provide additional insights into physical interpretation of different features. The improvement in classification results comes at the cost of longer computation time, in particular during the design and training stage. The final choice of the optimal algorithm therefore depends on time constraints and application purpose.
Is part of
Lohse, J.P. (2021). On Automated Classification of Sea Ice Types in SAR Imagery. (Doctoral thesis). https://hdl.handle.net/10037/20606.
Publisher
MDPI
Citation
Lohse J, Doulgeris ap, Dierking WFO. An Optimal Decision-Tree Design Strategy and Its Application to Sea Ice Classification from SAR Imagery. Remote Sensing. 2019;11(13)
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