Journal article

Training sample selection for robust multi-year within-season crop classification using machine learning

Z Gao, D Guo, D Ryu, AW Western

Computers and Electronics in Agriculture | Elsevier BV | Published : 2023

Abstract

Within-season crop classification using multispectral imagery is an effective way to generate timely crop maps that can support water and crop management; however, developing such models is challenging due to limited satellite imagery and ground truth data available during the season. This study investigated ways to optimize the use of multi-year samples in a within-season crop classification model, aiming to enable accurate within-season crop mapping across years. Our study focused on classifying field-scale corn/maize, cotton, and rice in south-eastern Australia from 2013 to 2019. The crop classification model was based on the random forest and support vector machine algorithms applied to ..

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