Abstract

This paper presents the performance and evaluation of a number of machine learning classifiers for the discrimination between the vegetation physiognomic classes using the satellite based time-series of the surface reflectance data. Discrimination of six vegetation physiognomic classes, Evergreen Coniferous Forest, Evergreen Broadleaf Forest, Deciduous Coniferous Forest, Deciduous Broadleaf Forest, Shrubs, and Herbs, was dealt with in the research. Rich-feature data were prepared from time-series of the satellite data for the discrimination and cross-validation of the vegetation physiognomic types using machine learning approach. A set of machine learning experiments comprised of a number of supervised classifiers with different model parameters was conducted to assess how the discrimination of vegetation physiognomic classes varies with classifiers, input features, and ground truth data size. The performance of each experiment was evaluated by using the 10-fold cross-validation method. Experiment using the Random Forests classifier provided highest overall accuracy (0.81) and kappa coefficient (0.78). However, accuracy metrics did not vary much with experiments. Accuracy metrics were found to be very sensitive to input features and size of ground truth data. The results obtained in the research are expected to be useful for improving the vegetation physiognomic mapping in Japan.

Highlights

  • Vegetation has been classified according to a number of criteria, such as climate [1], physiognomy [2], dominant species [3], combination of climate pattern and physiognomy [4], and physiognomic-floristic hierarchy [5]

  • This paper presents the performance and evaluation of a number of machine learning classifiers with respect to the time-series of the Moderate Resolution Imaging Spectroradiometer (MODIS) surface reflectance data for achieving an improved discrimination between the vegetation physiognomic types

  • This research deals with six vegetation physiognomic classes: Evergreen Coniferous Forest (ECF), Evergreen Broadleaf Forest (EBF), Deciduous Coniferous Forest (DCF), Deciduous Broadleaf Forest (DBF), Shrubs, and Herbs

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Summary

Introduction

Vegetation has been classified according to a number of criteria, such as climate [1], physiognomy [2], dominant species [3], combination of climate pattern and physiognomy [4], and physiognomic-floristic hierarchy [5]. A number of supervised classifiers such as maximum likelihood method [30], decision trees [31], Support Vector Machines [32], fuzzy learning [33], Random Forests [34, 35], and Neural Networks [36,37,38] have provided promising results in different regions Most of these studies have not dealt with the discrimination and validation of all kinds of vegetation physiognomic classes such as Evergreen Coniferous Forest, Evergreen Broadleaf Forest, Deciduous Coniferous Forest, Deciduous Broadleaf Forest, Shrubs, and Herbs in a study area. The performance of existing land cover maps is limited for the discrimination of vegetation physiognomic types [39]

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