Detection of laurel wilt disease in avocado using low altitude aerial imaging.

Laurel wilt is a lethal disease of plants in the Lauraceae plant family, including avocado (Persea americana). This devastating disease has spread rapidly along the southeastern seaboard of the United States and has begun to affect commercial avocado production in Florida. The main objective of this...

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Main Authors: Ana I de Castro, Reza Ehsani, Randy C Ploetz, Jonathan H Crane, Sherrie Buchanon
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2015-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4415916?pdf=render
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spelling doaj-dc866ad46f554df188aad48fee5d3d7c2020-11-25T00:59:37ZengPublic Library of Science (PLoS)PLoS ONE1932-62032015-01-01104e012464210.1371/journal.pone.0124642Detection of laurel wilt disease in avocado using low altitude aerial imaging.Ana I de CastroReza EhsaniRandy C PloetzJonathan H CraneSherrie BuchanonLaurel wilt is a lethal disease of plants in the Lauraceae plant family, including avocado (Persea americana). This devastating disease has spread rapidly along the southeastern seaboard of the United States and has begun to affect commercial avocado production in Florida. The main objective of this study was to evaluate the potential to discriminate laurel wilt-affected avocado trees using aerial images taken with a modified camera during helicopter surveys at low-altitude in the commercial avocado production area. The ability to distinguish laurel wilt-affected trees from other factors that produce similar external symptoms was also studied. RmodGB digital values of healthy trees and laurel wilt-affected trees, as well as fruit stress and vines covering trees were used to calculate several vegetation indices (VIs), band ratios, and VI combinations. These indices were subjected to analysis of variance (ANOVA) and an M-statistic was performed in order to quantify the separability of those classes. Significant differences in spectral values among laurel wilt affected and healthy trees were observed in all vegetation indices calculated, although the best results were achieved with Excess Red (ExR), (Red-Green) and Combination 1 (COMB1) in all locations. B/G showed a very good potential for separate the other factors with symptoms similar to laurel wilt-affected trees, such as fruit stress and vines covering trees, from laurel wilt-affected trees. These consistent results prove the usefulness of using a modified camera (RmodGB) to discriminate laurel wilt-affected avocado trees from healthy trees, as well as from other factors that cause the same symptoms and suggest performing the classification in further research. According to our results, ExR and B/G should be utilized to develop an algorithm or decision rules to classify aerial images, since they showed the highest capacity to discriminate laurel wilt-affected trees. This methodology may allow the rapid detection of laurel wilt-affected trees using low altitude aerial images and be a valuable tool in mitigating this important threat to Florida avocado production.http://europepmc.org/articles/PMC4415916?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Ana I de Castro
Reza Ehsani
Randy C Ploetz
Jonathan H Crane
Sherrie Buchanon
spellingShingle Ana I de Castro
Reza Ehsani
Randy C Ploetz
Jonathan H Crane
Sherrie Buchanon
Detection of laurel wilt disease in avocado using low altitude aerial imaging.
PLoS ONE
author_facet Ana I de Castro
Reza Ehsani
Randy C Ploetz
Jonathan H Crane
Sherrie Buchanon
author_sort Ana I de Castro
title Detection of laurel wilt disease in avocado using low altitude aerial imaging.
title_short Detection of laurel wilt disease in avocado using low altitude aerial imaging.
title_full Detection of laurel wilt disease in avocado using low altitude aerial imaging.
title_fullStr Detection of laurel wilt disease in avocado using low altitude aerial imaging.
title_full_unstemmed Detection of laurel wilt disease in avocado using low altitude aerial imaging.
title_sort detection of laurel wilt disease in avocado using low altitude aerial imaging.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2015-01-01
description Laurel wilt is a lethal disease of plants in the Lauraceae plant family, including avocado (Persea americana). This devastating disease has spread rapidly along the southeastern seaboard of the United States and has begun to affect commercial avocado production in Florida. The main objective of this study was to evaluate the potential to discriminate laurel wilt-affected avocado trees using aerial images taken with a modified camera during helicopter surveys at low-altitude in the commercial avocado production area. The ability to distinguish laurel wilt-affected trees from other factors that produce similar external symptoms was also studied. RmodGB digital values of healthy trees and laurel wilt-affected trees, as well as fruit stress and vines covering trees were used to calculate several vegetation indices (VIs), band ratios, and VI combinations. These indices were subjected to analysis of variance (ANOVA) and an M-statistic was performed in order to quantify the separability of those classes. Significant differences in spectral values among laurel wilt affected and healthy trees were observed in all vegetation indices calculated, although the best results were achieved with Excess Red (ExR), (Red-Green) and Combination 1 (COMB1) in all locations. B/G showed a very good potential for separate the other factors with symptoms similar to laurel wilt-affected trees, such as fruit stress and vines covering trees, from laurel wilt-affected trees. These consistent results prove the usefulness of using a modified camera (RmodGB) to discriminate laurel wilt-affected avocado trees from healthy trees, as well as from other factors that cause the same symptoms and suggest performing the classification in further research. According to our results, ExR and B/G should be utilized to develop an algorithm or decision rules to classify aerial images, since they showed the highest capacity to discriminate laurel wilt-affected trees. This methodology may allow the rapid detection of laurel wilt-affected trees using low altitude aerial images and be a valuable tool in mitigating this important threat to Florida avocado production.
url http://europepmc.org/articles/PMC4415916?pdf=render
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