A stepwise regression tree for nonlinear approximation: Applications to estimating subpixel land cover
- 1 January 2003
- journal article
- research article
- Published by Taylor & Francis in International Journal of Remote Sensing
- Vol. 24 (1) , 75-90
- https://doi.org/10.1080/01431160305001
Abstract
A stepwise regression tree (SRT) algorithm was developed for approximating complex nonlinear relationships. Based on the regression tree of Breiman et al . (BRT) and a stepwise linear regression (SLR) method, this algorithm represents an improvement over SLR in that it can approximate nonlinear relationships and over BRT in that it gives more realistic predictions. The applicability of this method to estimating subpixel forest was demonstrated using three test data sets, on all of which it gave more accurate predictions than SLR and BRT. SRT also generated more compact trees and performed better than or at least as well as BRT at all 10 equal forest proportion interval ranging from 0 to 100%. This method is appealing to estimating subpixel land cover over large areas.Keywords
This publication has 24 references indexed in Scilit:
- Global land cover classification at 1 km spatial resolution using a classification tree approachInternational Journal of Remote Sensing, 2000
- Global land cover classifications at 8 km spatial resolution: The use of training data derived from Landsat imagery in decision tree classifiersInternational Journal of Remote Sensing, 1998
- Subpixel forest cover in central Africa from multisensor, multitemporal dataRemote Sensing of Environment, 1997
- The robustness of canopy gap fraction estimates from red and near-infrared reflectances: A comparison of approachesRemote Sensing of Environment, 1995
- Mapping the land surface for global atmosphere‐biosphere models: Toward continuous distributions of vegetation's functional propertiesJournal of Geophysical Research: Atmospheres, 1995
- Classification of multispectral images based on fractions of endmembers: Application to land-cover change in the Brazilian AmazonRemote Sensing of Environment, 1995
- The 1 km AVHRR global land data set: first stages in implementationInternational Journal of Remote Sensing, 1994
- Nonlinear spectral mixing models for vegetative and soil surfacesRemote Sensing of Environment, 1994
- A technique for extrapolating and validating forest cover across large regions Calibrating AVHRR data with TM dataInternational Journal of Remote Sensing, 1989
- Nonlinear Statistical ModelsWiley Series in Probability and Statistics, 1987