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Embry-Riddle Scholarly Commons · Journal article (JAAER)

Using 3 Dimension Health Vegetation Index Point Clouds to Determine HLB Infected Citrus Trees

Published 2018-01-01 From Embry-Riddle Aeronautical University 4 authors

Attribution

This is the abstract and citation. Full text lives at Embry-Riddle Scholarly Commons — we link out rather than host. All credit to the authors and Embry-Riddle Aeronautical University.

Abstract

Verbatim from Embry-Riddle Scholarly Commons. Not paraphrased, not summarized.

Three-dimensional NDVI point clouds can be an innovative method for detecting Huanglongbing (HLB) disease in citrus trees. In February 2018, an Unmanned Aircraft System (UAS) captured narrow-band multispectral images to detect healthiness variations of infected citrus trees. A 30-acre section of a citrus grove in Florida with a known HLB infection was examined to determine if three-dimensional Normalized Difference Vegetation Index (NDVI) point clouds can indicate healthiness variations in HLB-infected citrus trees and how three-dimensional NDVI point clouds compared to two-dimensional NDVI reflectance maps for detecting healthiness variations in HLB-infected citrus trees. Wilcoxon Sign Rank testing compared Whole-Tree Vegetation Indices (WTVI) comprising of point or pixel proportions within five NDVI classifications between three-dimensional NVDI point clouds and two-dimensional NDVI reflectance maps. The results indicated significant differences between three-dimensional and two-dimensional points, grouped at the tree level, for suspected HLB-infected trees (p = 0.000). The data suggests three-dimensional NDVI point cloud points were more sensitive to less healthy levels of NDVI values by 2.7% compared to two dimensional NDVI data for suspected HLB-infected trees and by 10.6% (p = 0.000) for non-suspected HLB-infected trees. Researchers concluded three-dimensional NDVI point clouds could be used to determine healthiness variations in suspected HLB-infected citrus trees. Three-dimensional NVDI point clouds had a wider distribution of five index classifications than two-dimensional NDVI reflectance maps for suspected HLB-infected trees. The vertical structure of the citrus tree may contribute to the difference in distribution. There was a 10.01% (p = 0.021) increase in 3D NDVI point cloud points for non-suspected HLB-infected trees compared to the suspected HLB-infected trees. Additionally, there was a 9.04% (p = 0.032) increase in tree crown dimension for non-suspected HLB-infected trees compared to suspected HLB-infected trees. These data suggest non-suspected HLB-infected trees were larger than suspected HLB-infected trees.

Authors

  • Cerreta, Joseph Embry-Riddle Aeronautical University
  • Hanson, Ashley Embry-Riddle Aeronautical University
  • Martorella, Julianna E Embry-Riddle Aeronautical University
  • Martorella, Stacy Embry-Riddle Aeronautical University

Keywords

  • Unmanned Aircraft Systems
  • UAS
  • Drone
  • Agriculture
  • Normalized Difference Vegetation Index
  • NDVI
  • 3D
  • Point Cloud
  • Huanglongbing
  • HLB
  • Citrus
  • Orange

Citation: Cerreta, Joseph, Hanson, Ashley, Martorella, Julianna E , et al. (2018). Using 3 Dimension Health Vegetation Index Point Clouds to Determine HLB Infected Citrus Trees. Embry-Riddle Aeronautical University. Embry-Riddle Scholarly Commons ID oai:commons.erau.edu:jaaer-1776. https://commons.erau.edu/jaaer/vol28/iss1/2 ↗