4.7 Article

Improving Classification Accuracy of Multi-Temporal Landsat Images by Assessing the Use of Different Algorithms, Textural and Ancillary Information for a Mediterranean Semiarid Area from 2000 to 2015

Journal

REMOTE SENSING
Volume 9, Issue 10, Pages -

Publisher

MDPI
DOI: 10.3390/rs9101058

Keywords

land use classification; machine learning; textural information; contextual information

Funding

  1. D.G. de Investigacion y Politica Cientifica de la Consejeria de Educacion, Ciencia e Investigacion de la Region de Murcia
  2. Consejeria de Educacion y Universidades de la Comunidad Autonoma de la Region de Murcia through Fundacion Seneca-Agencia de Ciencia y Tecnologia de la Region de Murcia [20023/SF/16]

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The aim of this study was to evaluate three different strategies to improve classification accuracy in a highly fragmented semiarid area using, (i) different classification algorithms with parameter optimization in some cases; (ii) different feature sets including spectral, textural and terrain features; and (iii) different seasonal combinations of images. A three-way ANOVA was used to discern which of these approaches and their interactions significantly increases accuracy. Tukey-Kramer contrast using a heteroscedasticity-consistent estimation of the kappa covariances matrix was used to check for significant differences in accuracy. The experiment was carried out with Landsat TM, ETM and OLI images corresponding to the period 2000-2015. A combination of four images using random forest and the three feature sets was the best way to improve accuracy. Maximum likelihood, random forest and support vector machines do not significantly increase accuracy when textural information was added, but do so when terrain features were taken into account. On the other hand, sequential maximum a posteriori increased accuracy when textural features were used, but reduced accuracy substantially when terrain features were included. Random forest using the three feature subsets and sequential maximum a posteriori with spectral and textural features had the largest kappa values, around 0.9.

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