Abstract

South Korea’s agriculture is characterized by a mixture of various cultivated crops. In such an agricultural environment, convergence technology for ICT (information, communications, and technology) and AI (artificial intelligence) as well as agriculture is required to classify objects and predict yields. In general, the classification of paddy fields and field boundaries takes a lot of time and effort. The Farm Map was developed to clearly demarcate and classify the boundaries of paddy fields and fields in Korea. Therefore, this study tried to minimize the time and effort required to divide paddy fields and fields through the application of the Farm Map. To improve the fact that UAV image processing for a wide area requires a lot of time and effort to classify objects, we suggest a method for optimizing cultivated crop recognition. This study aimed to evaluate the applicability and effectiveness of machine learning classification techniques using a Farm Map in object-based mapping of agricultural land using unmanned aerial vehicles (UAVs). In this study, the advanced function selection method for object classification is to improve classification accuracy by using two types of classifiers, support vector machine (SVM) and random forest (RF). As a result of classification by applying a Farm Map-based SVM algorithm to wide-area UAV images, producer’s accuracy (PA) was 81.68%, user’s accuracy (UA) was 75.09%, the Kappa coefficient was 0.77, and the F-measure was 0.78. The results of classification by the Farm Map-based RF algorithm were as follows: PA of 96.58%, UA of 92.27%, a Kappa coefficient of 0.94, and the F-measure of 0.94. In the cultivation environment in which various crops were mixed, the corn cultivation area was estimated to be 96.54 ha by SVM, showing an accuracy of 90.27%. RF provided an estimate of 98.77 ha and showed an accuracy of 92.36%, which was higher than that of SVM. As a result of using the Farm Map for the object-based classification method, the agricultural land classification showed a higher efficiency in terms of time than the existing object classification method. Most importantly, it was confirmed that the efficiency of data processing can be increased by minimizing the possibility of misclassification in the obtained results. The obtained results confirmed that rapid and reliable analysis is possible when the cultivated area of crops is identified using UAV images, a Farm Map, and machine learning.

Highlights

  • Corn, along with rice and wheat, is one of the world’s three major grains, and it is a food crop that has high productivity per unit area and is widely used as snacks, forage, starch, and cooking oil [1,2]

  • random forest (RF) was found to be higher in accuracy than support vector machine (SVM), and, in terms of processing speed, SVM was found to be slightly faster than RF

  • The overall accuracy of the classification results using the Farm Map-based SVM and RF algorithms used in this study did not differ significantly, but there was a slight difference in the classification accuracy of corn

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Summary

Introduction

Along with rice and wheat, is one of the world’s three major grains, and it is a food crop that has high productivity per unit area and is widely used as snacks, forage, starch, and cooking oil [1,2]. The Korean domestic grain self-sufficiency rate was 21.7% in 2018, and corn, among major food crops, had the lowest rate at 0.8%. The import volume of corn is about 10,166,000 tons, with an import value of 2126 million U.S dollars, which is a situation dependent on imports. The South Korean government is preparing a plan to increase the production of crops with high import dependence, such as corn, by cultivating other crops in paddy fields and improving varieties [5]. Global abnormal weather events such as those in 2020 highlight the instability of international grain prices and the importance of food security

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