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Mapping forest change using stacked generalization: An ensemble approach

  • Sean P. Healey
  • , Warren B. Cohen
  • , Zhiqiang Yang
  • , C. Kenneth Brewer
  • , Evan B. Brooks
  • , Noel Gorelick
  • , Alexander J. Hernandez
  • , Chengquan Huang
  • , M. Joseph Hughes
  • , Robert E. Kennedy
  • , Thomas R. Loveland
  • , Gretchen G. Moisen
  • , Todd A. Schroeder
  • , Stephen V. Stehman
  • , James E. Vogelmann
  • , Curtis E. Woodcock
  • , Limin Yang
  • , Zhe Zhu
  • United States Department of Agriculture
  • US Forest Service Pacific Northwest Research Station
  • Oregon State University
  • US Forest Service Washington Office
  • Virginia Polytechnic Institute and State University
  • Alphabet Inc.
  • Utah State University
  • University of Maryland, College Park
  • USGS Earth Resources Observations and Science Center
  • US Forest Service Southern Research Station
  • Boston University
  • KBR, Inc
  • U.S. Geological Survey Earth Resources Observation and Science Center
  • Texas Tech University

Research output: Contribution to journalArticlepeer-review

259 Scopus citations

Abstract

The ever-increasing volume and accessibility of remote sensing data has spawned many alternative approaches for mapping important environmental features and processes. For example, there are several viable but highly varied strategies for using time series of Landsat imagery to detect changes in forest cover. Performance among algorithms varies across complex natural systems, and it is reasonable to ask if aggregating the strengths of an ensemble of classifiers might result in increased overall accuracy. Relatively simple rules have been used in the past to aggregate classifications among remotely sensed maps (e.g. using majority predictions), and in other fields, empirical models have been used to create situationally specific algorithm weights. The latter process, called “stacked generalization” (or “stacking”), typically uses a parametric model for the fusion of algorithm outputs. We tested the performance of several leading forest disturbance detection algorithms against ensembles of the outputs of those same algorithms based upon stacking using both parametric and Random Forests-based fusion rules. Stacking using a Random Forests model cut omission and commission error rates in half in many cases in relation to individual change detection algorithms, and cut error rates by one quarter compared to more conventional parametric stacking. Stacking also offers two auxiliary benefits: alignment of outputs to the precise definitions built into a particular set of empirical calibration data; and, outputs which may be adjusted such that map class totals match independent estimates of change in each year. In general, ensemble predictions improve when new inputs are added that are both informative and uncorrelated with existing ensemble components. As increased use of cloud-based computing makes ensemble mapping methods more accessible, the most useful new algorithms may be those that specialize in providing spectral, temporal, or thematic information not already available through members of existing ensembles.

Original languageEnglish
Pages (from-to)717-728
Number of pages12
JournalRemote Sensing of Environment
Volume204
DOIs
StatePublished - Jan 2018

Keywords

  • Change detection
  • Ensemble
  • Landsat
  • Multiple classifier systems

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