Title
Evalution of Random Forest Ensemble Classification for Land Cover Mapping Using TM and Ancillary Geographical Data
Abstract
Large area land cover mapping, involving large volumes of data, are becoming more prevalent in remote sensing applications. Thus there is a pressing need for increased automation in the land cover mapping process. The main objective of this research was to map land cover in the Small Sanjiang Plain where marsh distributed concentively combined Landsat TM imagery with ancillary geographical data and compare the performance of three machine learning algrithms (MLAs) including random forest (RF), classification and regression tree (CART) and maximum likelihood classification (MLC). Comparisions were based on several criteria: overall accuracy, sensitivity to data set size and noise. Our results indicated that (1) Random Forest can achieve substantial improvements in accuracy over single classification trees and traditional MLC method, overall accuracy was 91.0%, kappa coefficient was 0.8943, with marsh class accuracy ranging from 77.4% to 90.0%; (2) Random forest was least sensitive to reduction in training sample size and it was most resistant to the presence of noise compared to CART and MLC. The comparison result revealed that random forest has potential to increase automation in large area land cover mapping while achieving reasonable map accuracy.
Year
DOI
Venue
2009
10.1109/FSKD.2009.165
FSKD (2)
Keywords
Field
DocType
land cover,large area land cover,large volume,ancillary geographical data,marsh class accuracy,land cover mapping process,land cover mapping,random forest,random forest ensemble classification,overall accuracy,reasonable map accuracy,maximum likelihood classification,maximum liklihood classification,data analysis,geography,classification tree,forestry,accuracy,noise,remote sensing,marsh,remote sensing applications,kappa coefficient,regression analysis,sample size,machine learning,learning artificial intelligence,pixel
Decision tree,Regression analysis,Computer science,Remote sensing application,Cohen's kappa,Artificial intelligence,Random forest,Sanjiang Plain,Land cover,Machine learning,Sample size determination
Conference
Citations 
PageRank 
References 
1
0.35
2
Authors
3
Name
Order
Citations
PageRank
Xiaodong Na1192.64
Shuying Zang222.86
Jianhua Wang343.53