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Exploring diversity in ensemble classification: Applications in large area land cover mapping

journal contribution
posted on 2024-11-02, 04:56 authored by Andrew Mellor, Samia Boukir
Ensemble classifiers, such as random forests, are now commonly applied in the field of remote sensing, and have been shown to perform better than single classifier systems, resulting in reduced generalisation error. Diversity across the members of ensemble classifiers is known to have a strong influence on classification performance - whereby classifier errors are uncorrelated and more uniformly distributed across ensemble members. The relationship between ensemble diversity and classification performance has not yet been fully explored in the fields of information science and machine learning and has never been examined in the field of remote sensing. This study is a novel exploration of ensemble diversity and its link to classification performance, applied to a multi-class canopy cover classification problem using random forests and multisource remote sensing and ancillary GIS data, across seven million hectares of diverse dry-sclerophyll dominated public forests in Victoria Australia. A particular emphasis is placed on analysing the relationship between ensemble diversity and ensemble margin - two key concepts in ensemble learning. The main novelty of our work is on boosting diversity by emphasizing the contribution of lower margin instances used in the learning process. Exploring the influence of tree pruning on diversity is also a new empirical analysis that contributes to a better understanding of ensemble performance. Results reveal insights into the trade-off between ensemble classification accuracy and diversity, and through the ensemble margin, demonstrate how inducing diversity by targeting lower margin training samples is a means of achieving better classifier performance for more difficult or rarer classes and reducing information redundancy in classification problems. Our findings inform strategies for collecting training data and designing and parameterising ensemble clas

History

Related Materials

  1. 1.
    DOI - Is published in 10.1016/j.isprsjprs.2017.04.017
  2. 2.
    ISSN - Is published in 09242716

Journal

ISPRS Journal of Photogrammetry and Remote Sensing

Volume

129

Start page

151

End page

161

Total pages

11

Publisher

Elsevier

Place published

Netherlands

Language

English

Copyright

© 2017 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS)

Former Identifier

2006076848

Esploro creation date

2020-06-22

Fedora creation date

2017-09-20

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