4.6 Article

Sentinel-2 Satellite Imagery for Urban Land Cover Classification by Optimized Random Forest Classifier

Journal

APPLIED SCIENCES-BASEL
Volume 11, Issue 2, Pages -

Publisher

MDPI
DOI: 10.3390/app11020543

Keywords

Sentinel-2 satellite; random forest; bayesian optimization; hyperparameter tuning; urban management; land cover classification

Funding

  1. Fundamental Research Funds for the China Central Universities of USTB [FRF-DF-19-002]
  2. Scientific and Technological Innovation Foundation of Shunde Graduate School, USTB [BK20BE014]

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This study proposes a systematic method to automatically tune the hyperparameters of a random forest classifier by Bayesian parameter optimization, and utilizes Sentinel-2A/B satellite imagery for land cover classification in Beijing. The experimental results demonstrate that the optimized random forest classifier outperforms traditional support vector machines and random forests with default hyperparameters in terms of accuracy, precision, and recall.
Land cover classification is able to reflect the potential natural and social process in urban development, providing vital information to stakeholders. Recent solutions on land cover classification are generally addressed by remotely sensed imagery and supervised classification methods. However, a high-performance classifier is desirable but challenging due to the existence of model hyperparameters. Conventional approaches generally rely on manual tuning, which is time-consuming and far from satisfying. Therefore, this work aims to propose a systematic method to automatically tune the hyperparameters by Bayesian parameter optimization for the random forest classifier. The recently launched Sentinel-2A/B satellites are drawn to provide the remote sensing imageries for land cover classification case study in Beijing, China, which have the best spectral/spatial resolutions among the freely available satellites. The improved random forest with Bayesian parameter optimization is compared against the support vector machine (SVM) and random forest (RF) with default hyperparameters by discriminating five land cover classes including building, tree, road, water, and crop field. Comparative experimental results show that the optimized RF classifier outperforms the conventional SVM and the RF with default hyperparameters in terms of accuracy, precision, and recall. The effects of band/feature number and the band usefulness are also assessed. It is envisaged that the improved classifier for Sentinel-2 satellite image processing can find a wide range of applications where high-resolution satellite imagery classification is applicable.

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