A Methodology for the Automated Delineation of Crop Tree Crowns from UAV-Based Aerial Imagery by Means of Morphological Image Analysis
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Abstract
The popularisation of aerial remote sensing using unmanned aerial vehicles (UAV), has
boosted the capacities of agronomists and researchers to offer farmers valuable data regarding
the status of their crops. This paper describes a methodology for the automated detection and
individual delineation of tree crowns in aerial representations of crop fields by means of image
processing and analysis techniques, providing accurate information about plant population and
canopy coverage in intensive-farming orchards with a row-based plant arrangement. To that end, after
pre-processing initial aerial captures by means of photogrammetry and morphological image analysis,
a resulting binary representation of the land plot surveyed is treated at connected component-level in
order to separate overlapping tree crown projections. Then, those components are morphologically
transformed into a set of seeds with which tree crowns are finally delineated, establishing the
boundaries between them when they appear overlapped. This solution was tested on images from
three different orchards, achieving semantic segmentations in which more than 94% of tree canopybelonging pixels were correctly classified, and more than 98% of trees were successfully detected
when assessing the methodology capacities for estimating the overall plant population. According to
these results, the methodology represents a promising tool for automating the inventorying of plants
and estimating individual tree-canopy coverage in intensive tree-based orchards
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Bibliographic citation
Ponce, J. M., Aquino, A., Tejada, D., Al-Hadithi, B. M., & Andújar, J. M. (2021). A Methodology for the Automated Delineation of Crop Tree Crowns from UAV-Based Aerial Imagery by Means of Morphological Image Analysis. In Agronomy (Vol. 12, Issue 1, p. 43). MDPI AG. https://doi.org/10.3390/agronomy12010043














