Abstract

The optimisation of vineyards management requires efficient and automated methods able to identify individual plants. In the last few years, Unmanned Aerial Vehicles (UAVs) have become one of the main sources of remote sensing information for Precision Viticulture (PV) applications. In fact, high resolution UAV-based imagery offers a unique capability for modelling plant’s structure making possible the recognition of significant geometrical features in photogrammetric point clouds. Despite the proliferation of innovative technologies in viticulture, the identification of individual grapevines relies on image-based segmentation techniques. In that way, grapevine and non-grapevine features are separated and individual plants are estimated usually considering a fixed distance between them. In this study, an automatic method for grapevine trunk detection, using 3D point cloud data, is presented. The proposed method focuses on the recognition of key geometrical parameters to ensure the existence of every plant in the 3D model. The method was tested in different commercial vineyards and to push it to its limit a vineyard characterised by several missing plants along the vine rows, irregular distances between plants and occluded trunks by dense vegetation in some areas, was also used. The proposed method represents a disruption in relation to the state of the art, and is able to identify individual trunks, posts and missing plants based on the interpretation and analysis of a 3D point cloud. Moreover, a validation process was carried out allowing concluding that the method has a high performance, especially when it is applied to 3D point clouds generated in phases in which the leaves are not yet very dense (January to May). However, if correct flight parametrizations are set, the method remains effective throughout the entire vegetative cycle.

Highlights

  • The monitoring and management of agricultural crops, with regard to nutrient level, water stress, diseases and pests, and phenological status, are vital for successful agricultural operations [1]

  • Unmanned Aerial Vehicles (UAVs) are a popular tool in Precision Agriculture (PA) and the obtained aerial imagery is turned into information which can be used to optimise crop inputs through variable rate applications [6,7,8]

  • We present an innovative and fully automatic method able to detect and locate individual grapevine trunks, by exploring 3D point clouds derived from photogrammetric processing of UAV-based RGB imagery

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Summary

Introduction

The monitoring and management of agricultural crops, with regard to nutrient level, water stress, diseases and pests, and phenological status, are vital for successful agricultural operations [1]. Considering the fact that it is necessary to maximise yield and resources, while reducing environmental impacts, mainly by optimising the use of water and significantly reducing fertilisers and pesticides [3]. This can only be achieved by obtaining data that allow the intelligent and sustainable management of agricultural parcels [4]. UAVs are a popular tool in PA and the obtained aerial imagery is turned into information which can be used to optimise crop inputs through variable rate applications [6,7,8]

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