Abstract

Many environmental data are inherently imbalanced, with some majority land use and land cover types dominating over rare ones. In cultivated ecosystems minority classes are often the target as they might indicate a beginning land use change. Most standard classifiers perform best on a balanced distribution of classes, and fail to detect minority classes. We used the synthetic minority oversampling technique (smote) with Random Forest to classify land cover classes in a small agricultural catchment in South Korea using modis time series. This area faces a major soil erosion problem and policy measures encourage farmers to replace annual by perennial crops to mitigate this issue. Our major goal was therefore to improve the classification performance on annual and perennial crops. We compared four different classification scenarios on original imbalanced and synthetically oversampled balanced data to quantify the effect of smote on classification performance. smote substantially increased the true positive rate of all oversampled minority classes. However, the performance on minor classes remained lower than on the majority class. We attribute this result to a class overlap already present in the original data set that is not resolved by smote. Our results show that resampling algorithms could help to derive more accurate land use and land cover maps from freely available data. These maps can be used to provide information on the distribution of land use classes in heterogeneous agricultural areas and could potentially benefit decision making.

Highlights

  • ObjectivesThe goal of our study is to improve the classification of the rare classes ‘annual dryland crops’ and ‘perennial crops’ by using Random Forests (RF) with synthetic minority oversampling technique (SMOTE) on Moderate Resolution Imaging Spectroradiometer (MODIS) time series

  • Detailed information on land use and land cover (LULC) is essential in many areas of environmental sciences

  • The goal of our study is to improve the classification of the rare classes ‘annual dryland crops’ and ‘perennial crops’ by using Random Forests (RF) with synthetic minority oversampling technique (SMOTE) on Moderate Resolution Imaging Spectroradiometer (MODIS) time series

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Summary

Objectives

The goal of our study is to improve the classification of the rare classes ‘annual dryland crops’ and ‘perennial crops’ by using RF with SMOTE on MODIS time series. Our goal was to improve the classification of the classes ‘annual dryland crops’ and ‘perennial crops’ based on freely available remote sensing data in order to improve the monitoring of LULC changes

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