Evaluation of classification techniques in Very-High-Resolution (VHR) imagery: A case study of the identification of deadwood in the Chilean Central-Patagonian Forests

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Authors
Esse, Carlos
Condal, Alfonso
De los Rios Escalante, Patricio
Correa Araneda, Francisco
Moreno Garcia, Roberto
Jara Falcon, Roderick
Profesor GuĆ­a
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Date
Datos de publicación:
10.1016/j.ecoinf.2022.101685

ECOLOGICAL INFORMATICS,Vol.69,,2022

Tipo de recurso
WOS
Keywords
Materia geogrƔfica
Abstract
During the past three decades, various methods have been developed to improve the classification accuracy in very high resolution (< 2 m) satellite data. This study's main goal was to evaluate and select the most suitable classification approach for detecting deadwood potentially useful for energy projects that would satisfy part of the demand for heating in the area. We compare five classification approaches using a WorldView-2 (Digital Global, Ins) standard, an orthorectified image of the Ays ' en region of the Chilean Patagonia. The five classifiers were evaluated and selecting the best one was carried out through a confusion matrix and Kappa coefficient. The results showed that the two non-parametric classifiers used (neural net and support vector machine) offered the best performance (98%) and the best Kappa coefficient (0.97). We conclude that it is essential to promote the development of innovative projects in native forests by local owners can contribute, to the formulation of public policies that directly benefit the Ays ' en region's inhabitants.
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