Abstract

Machine learning techniques (ML) have gained attention in precision agriculture practices since they efficiently address multiple applications, like estimating the growth and yield of trees in forest plantations. The combination between ML algorithms and spectral vegetation indices (VIs) from high-spatial-resolution line measurement, segment: 0.079024 m multispectral imagery, could optimize the prediction of these biometric variables. In this paper, we investigate the performance of ML techniques and VIs acquired with an unnamed aerial vehicle (UAV) to predict the diameter at breast height (DBH) and total height (Ht) of eucalyptus trees. An experimental site with six eucalyptus species was selected, and the Parrot Sequoia sensor was used. Several ML techniques were evaluated, like random forest (RF), REPTree (DT), alternating model tree (AT,) k-nearest neighbor (KNN), support vector machine (SVM), artificial neural network (ANN), linear regression (LR), and radial basis function (RBF). Each algorithm performance was verified using the correlation coefficient (r) and the mean absolute error (MAE). We used, as input, 34 VIs as numeric variables to predict DHB and Ht. We also added to the model a categorical variable as input identifying the different eucalyptus trees species. The RF technique obtained an overall superior estimation for all the tested configurations. Still, the RBF also showed a higher performance for predicting DHB, numerically surpassing the RF both in r and MAE, in some cases. For Ht variable, the technique that obtained the smallest MAE was SVM, though in a particular test. In this regard, we conclude that a combination of ML and VIs extracted from UAV-based imagery is suitable to estimate DBH and Ht in eucalyptus species. The approach presented constitutes an interesting contribution to the inventory and management of planted forests.

Highlights

  • Modeling the growth and yield of trees is an essential issue in forest management

  • Here we present the performances of several Machine learning techniques (ML) algorithms to predict diameter at breast height (DBH) and Ht for different Eucalyptus species based on spectral indices computed from high-spatial-resolution multispectral imagery acquired by unnamed aerial vehicle (UAV)-embed remote sensor

  • We demonstrated the capability of different ML algorithms to predict biometric variables, like DBH and Ht of eucalyptus trees, based on spectral indices only computed from high-spatial-resolution multispectral imagery acquired by a UAV

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Summary

Introduction

Brazilian tree plantations are the most productive on a worldwide scale, and eucalyptus trees are the most common species used in reforestation activities [1]). There are more than 700 species of Eucalyptus worldwide, and they are used for different applications, like paper, cellulose, and energy generation, vegetal-charcoal, and others [1]. As a result of their high expansion rate in many tropical countries [2], eucalyptus trees attracted attention as an important commercial role in the Brazilian economy, and is mainly produced in states like Minas Gerais (24%), São Paulo (17%), and Mato Grosso do Sul (16%). Mato Grosso do Sul led this expansion with an average growth of 7.4% per year [1]

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