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Articles

Enhanced decision tree ensembles for land-cover mapping from fully polarimetric SAR data

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Pages 7138-7160 | Received 19 Apr 2017, Accepted 22 Aug 2017, Published online: 31 Aug 2017
 

ABSTRACT

Fully polarimetric synthetic aperture radar (PolSAR) Earth Observations showed great potential for mapping and monitoring agro-environmental systems. Numerous polarimetric features can be extracted from these complex observations which may lead to improve accuracy of land-cover classification and object characterization. This article employed two well-known decision tree ensembles, i.e. bagged tree (BT) and random forest (RF), for land-cover mapping from PolSAR imagery. Moreover, two fast modified decision tree ensembles were proposed in this article, namely balanced filter-based forest (BFF) and cost-sensitive filter-based forest (CFF). These algorithms, designed based on the idea of RF, use a fast filter feature selection algorithms and two extended majority voting. They are also able to embed some solutions of imbalanced data problem into their structures. Three different PolSAR datasets, with imbalanced data, were used for evaluating efficiency of the proposed algorithms. The results indicated that all the tree ensembles have higher efficiency and reliability than the individual DT. Moreover, both proposed tree ensembles obtained higher mean overall accuracy (0.5–14% higher), producer’s accuracy (0.5–10% higher), and user’s accuracy (0.5–9% higher) than the classical tree ensembles, i.e. BT and RF. They were also much faster (e.g. 2–10 times) and more stable than their competitors for classification of these three datasets. In addition, unlike BT and RF, which obtained higher accuracy in large ensembles (i.e. the high number of DT), BFF and CFF can also be more efficient and reliable in smaller ensembles. Furthermore, the extended majority voting techniques could outperform the classical majority voting for decision fusion.

Acknowledgements

The authors would like to thank NASA Jet Propulsion Laboratory for sharing UAVSAR of Winnipeg, Manitoba, Canada and Agriculture and Agri-Food Canada for the reference map of this area, as well as, the European Space Agency for sharing the EMISAR and AIRSAR data and the corresponding reference data. This research was partially supported by the Iranian National Science Foundation (INSF).

Disclosure statement

No potential conflict of interest was reported by the authors.

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