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Using remote sensing to identify individual tree species in orchards: A review

•Fruit trees are an essential subset of all tree species due to their high water and nutrient content.•We analyze the literature to understand the methods proposed for the identification of individual fruit trees in orchards.•We consider 74 articles that were published in 22 different journals publi...

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Published in:Scientia horticulturae 2023-11, Vol.321, p.112333, Article 112333
Main Authors: OZDARICI-OK, Asli, OK, Ali Ozgun
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Language:English
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description •Fruit trees are an essential subset of all tree species due to their high water and nutrient content.•We analyze the literature to understand the methods proposed for the identification of individual fruit trees in orchards.•We consider 74 articles that were published in 22 different journals published.•Our investigation presents a wide variety of conventional and modern digital image analysis techniques, with the utilization of products derived from space-borne, airborne, and terrestrial systems.•We provide a detailed overview of the key aspects of the major efforts proposed for identifying individual fruit trees in orchards. Fruit trees are an essential subset of all tree species due to their high water and nutrient content. They play a vital role in human nutrition and provide a significant economic boost for top pomiculture countries. The purpose of this article was to investigate the published articles based on the categorization of orchard trees in accordance with the various climatic zones and conduct a review related to the methods for the identification of individual fruit trees in orchards. The review looked into the methods that have been used in the past to identify orchard trees and define the crowns of those trees. We highlight 74 articles that were published in 22 different journals published in the Web of Science database. A wide variety of conventional and modern digital image analysis techniques, including deep learning techniques, can be used to facilitate the efficient utilization of products derived from space-borne, airborne, and terrestrial systems. We believe that efficient orchard management to support consistent and sufficient fruit yields is a goal that should be prioritized. In this respect, fruit tree identification and modeling procedures are continually being enhanced and expanded thanks to ongoing research and development efforts. In this context, this review provides a detailed overview of the key aspects of the major efforts proposed for identifying individual fruit trees in orchards.
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recordid cdi_crossref_primary_10_1016_j_scienta_2023_112333
source Elsevier
subjects Climatic zones
Crown delineation
Deep learning
Fruit trees
Image analysis
Machine learning
Orchards
Remote sensing
Tree identification
title Using remote sensing to identify individual tree species in orchards: A review
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