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Bayesian aggregation improves traditional single image crop classification approaches

Authors :
Matvienko, Ivan
Gasanov, Mikhail
Petrovskaia, Anna
Jana, Raghavendra Belur
Pukalchik, Maria
Oseledets, Ivan
Publication Year :
2020

Abstract

Machine learning (ML) methods and neural networks (NN) are widely implemented for crop types recognition and classification based on satellite images. However, most of these studies use several multi-temporal images which could be inapplicable for cloudy regions. We present a comparison between the classical ML approaches and U-Net NN for classifying crops with a single satellite image. The results show the advantages of using field-wise classification over pixel-wise approach. We first used a Bayesian aggregation for field-wise classification and improved on 1.5% results between majority voting aggregation. The best result for single satellite image crop classification is achieved for gradient boosting with an overall accuracy of 77.4% and macro F1-score 0.66.<br />Comment: Paper presented at the ICLR 2020 Workshop on Computer Vision for Agriculture (CV4A)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2004.03468
Document Type :
Working Paper