28 March 2019 Land-use and land-cover classification using Sentinel-2 data and machine-learning algorithms: operational method and its implementation for a mountainous area of Nepal
Marie Delalay, Varun Tiwari, Alan D. Ziegler, Vik Gopal, Paul Passy
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Abstract
In the context of land-use and land-cover (LULC) classification, there is a lack of leverage of the recent increase of the ease of access to satellite imagery data, cloud computing platforms, and classification techniques. We present both the development of an operational method for LULC classification that considers these progresses and the implementation of this operational method for a mountainous area of Nepal. The operational method allows the comparison of three LULC maps, each derived with a different classification technique [classification and regression tree (CART), max entropy (MaxEnt), and random forest (RF)] applied to Sentinel-2 data on the Google Earth Engine platform. The results derived with the RF technique have the highest overall accuracy coefficient (92%). The probabilities that the RF technique produces a more accurate LULC map than the MaxEnt (95%) and CART (61%) techniques are based on Kappa statistics. Results of general linear models suggest that some LULC types have higher producer’s and user’s accuracies at a statistically significant level. The operational method can help the producers of LULC maps conduct future work on areas in developing countries, as such contributing to addressing various issues that involve land use.
© 2019 Society of Photo-Optical Instrumentation Engineers (SPIE) 1931-3195/2019/$25.00 © 2019 SPIE
Marie Delalay, Varun Tiwari, Alan D. Ziegler, Vik Gopal, and Paul Passy "Land-use and land-cover classification using Sentinel-2 data and machine-learning algorithms: operational method and its implementation for a mountainous area of Nepal," Journal of Applied Remote Sensing 13(1), 014530 (28 March 2019). https://doi.org/10.1117/1.JRS.13.014530
Received: 10 July 2018; Accepted: 6 March 2019; Published: 28 March 2019
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Cited by 24 scholarly publications.
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KEYWORDS
Image classification

Satellites

Earth observing sensors

Clouds

Remote sensing

Satellite imaging

Algorithm development

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