Classifying Soil Type Using Radar Satellite Images

Abstract

The growth of the crop is dependent on soil type, apart from atmospheric and geo-location characteristics. As of now, there is no direct and cost free method to measure soil property or to classify soil type. In this work, we proposed a machine learning model to classify soil type using Sentinel-1 satellite radar images. Further, the developed classifier achieved 72.17% F1-score classifying sandy, free and clayish on a set of 65003 data points collected over one year (from Oct 2018 to Sep 2019) over 14 corn parcels near Ourique, Portugal.

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MD Sajib Ahmed, Teresa Gonçalves, Luı́s Rato, José Rafael Marques da Silva, Filipe Vieira, Luı́s Paixão, and Pedro Salgueiro. Classifying Soil Type Using Radar Satel- lite Images. In Proceedings of the 26th Portuguese Conference on Pattern Recognition, RECPAD 2020, 2020.

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