This paper focuses on the discrimination of seven different savannah tree species at leaf level using hyperspectral data. The data is small in size, high-dimensional and shows large within-species variability combined with small between species variability which makes discrimination between the tree species (hereafter referred to as classes) challenging. We focus on two classification methods: K-nearest neighbour and feed-forward neural networks for the discrimination of the classes. For both methods, direct 7-class prediction results in high misclassification rates. We therefore construct binary classifiers for all possible binary classification problems and combine them using Error Correcting Output Codes (ECOC) to form a 7-class predictor. ECOC with 1-nearest neighbour binary classifiers result in no improvement compared to a 1-nearest neighbour 7-class predictor whereas ECOC with neural networks binary classifiers improve accuracy by 10% compared to neural networks 7-class predictor, and error rates become acceptable.
Reference:
Dastile, X., Jäger, G., Debba, P. and Cho, M.A. 2012. Combining binary classifiers to improve tree species discrimination at leaf level. Conference Proceedings of the 54th Annual Conference of the South African Statistical Association, Port Elizabeth, 5-9 November 2012
Dastile, X., Jäger, G., Debba, P., & Cho, M. A. (2012). Combining binary classifiers to improve tree species discrimination at leaf level. http://hdl.handle.net/10204/6399
Dastile, X, G Jäger, Pravesh Debba, and Moses A Cho. "Combining binary classifiers to improve tree species discrimination at leaf level." (2012): http://hdl.handle.net/10204/6399
Dastile X, Jäger G, Debba P, Cho MA, Combining binary classifiers to improve tree species discrimination at leaf level; 2012. http://hdl.handle.net/10204/6399 .