Spectral Identification of Disease in Weeds Using Multilayer Perceptron with Automatic Relevance Determination

Microbotryum silybum, a smut fungus, is studied as an agent for the biological control of Silybum marianum (milk thistle) weed. Confirmation of the systemic infection is essential in order to assess the effectiveness of the biological control application and assist decision-making. Nonetheless, in s...

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Main Authors: Afroditi Alexandra Tamouridou, Xanthoula Eirini Pantazi, Thomas Alexandridis, Anastasia Lagopodi, Giorgos Kontouris, Dimitrios Moshou
Format: Article
Language:English
Published: MDPI AG 2018-08-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/18/9/2770
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spelling doaj-2c19bf72e7d74a00b0087c0fe3d985bd2020-11-25T00:20:52ZengMDPI AGSensors1424-82202018-08-01189277010.3390/s18092770s18092770Spectral Identification of Disease in Weeds Using Multilayer Perceptron with Automatic Relevance DeterminationAfroditi Alexandra Tamouridou0Xanthoula Eirini Pantazi1Thomas Alexandridis2Anastasia Lagopodi3Giorgos Kontouris4Dimitrios Moshou5Agricultural Engineering Laboratory, Faculty of Agriculture, Aristotle University of Thessaloniki, 54124 Thessaloniki, GreeceAgricultural Engineering Laboratory, Faculty of Agriculture, Aristotle University of Thessaloniki, 54124 Thessaloniki, GreeceLaboratory of Remote Sensing and GIS, Faculty of Agriculture, Aristotle University of Thessaloniki, 54124 Thessaloniki, GreecePlant Pathology Laboratory, Faculty of Agriculture, Aristotle University of Thessaloniki, 54124 Thessaloniki, GreeceLaboratory of Remote Sensing and GIS, Faculty of Agriculture, Aristotle University of Thessaloniki, 54124 Thessaloniki, GreeceAgricultural Engineering Laboratory, Faculty of Agriculture, Aristotle University of Thessaloniki, 54124 Thessaloniki, GreeceMicrobotryum silybum, a smut fungus, is studied as an agent for the biological control of Silybum marianum (milk thistle) weed. Confirmation of the systemic infection is essential in order to assess the effectiveness of the biological control application and assist decision-making. Nonetheless, in situ diagnosis is challenging. The presently demonstrated research illustrates the identification process of systemically infected S. marianum plants by means of field spectroscopy and the multilayer perceptron/automatic relevance determination (MLP-ARD) network. Leaf spectral signatures were obtained from both healthy and infected S. marianum plants using a portable visible and near-infrared spectrometer (310–1100 nm). The MLP-ARD algorithm was applied for the recognition of the infected S. marianum plants. Pre-processed spectral signatures served as input features. The spectra pre-processing consisted of normalization, and second derivative and principal component extraction. MLP-ARD reached a high overall accuracy (90.32%) in the identification process. The research results establish the capacity of MLP-ARD to precisely identify systemically infected S. marianum weeds during their vegetative growth stage.http://www.mdpi.com/1424-8220/18/9/2770plant pathologyMLP-ARDdisease detectionartificial intelligenceprecision agriculture
collection DOAJ
language English
format Article
sources DOAJ
author Afroditi Alexandra Tamouridou
Xanthoula Eirini Pantazi
Thomas Alexandridis
Anastasia Lagopodi
Giorgos Kontouris
Dimitrios Moshou
spellingShingle Afroditi Alexandra Tamouridou
Xanthoula Eirini Pantazi
Thomas Alexandridis
Anastasia Lagopodi
Giorgos Kontouris
Dimitrios Moshou
Spectral Identification of Disease in Weeds Using Multilayer Perceptron with Automatic Relevance Determination
Sensors
plant pathology
MLP-ARD
disease detection
artificial intelligence
precision agriculture
author_facet Afroditi Alexandra Tamouridou
Xanthoula Eirini Pantazi
Thomas Alexandridis
Anastasia Lagopodi
Giorgos Kontouris
Dimitrios Moshou
author_sort Afroditi Alexandra Tamouridou
title Spectral Identification of Disease in Weeds Using Multilayer Perceptron with Automatic Relevance Determination
title_short Spectral Identification of Disease in Weeds Using Multilayer Perceptron with Automatic Relevance Determination
title_full Spectral Identification of Disease in Weeds Using Multilayer Perceptron with Automatic Relevance Determination
title_fullStr Spectral Identification of Disease in Weeds Using Multilayer Perceptron with Automatic Relevance Determination
title_full_unstemmed Spectral Identification of Disease in Weeds Using Multilayer Perceptron with Automatic Relevance Determination
title_sort spectral identification of disease in weeds using multilayer perceptron with automatic relevance determination
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2018-08-01
description Microbotryum silybum, a smut fungus, is studied as an agent for the biological control of Silybum marianum (milk thistle) weed. Confirmation of the systemic infection is essential in order to assess the effectiveness of the biological control application and assist decision-making. Nonetheless, in situ diagnosis is challenging. The presently demonstrated research illustrates the identification process of systemically infected S. marianum plants by means of field spectroscopy and the multilayer perceptron/automatic relevance determination (MLP-ARD) network. Leaf spectral signatures were obtained from both healthy and infected S. marianum plants using a portable visible and near-infrared spectrometer (310–1100 nm). The MLP-ARD algorithm was applied for the recognition of the infected S. marianum plants. Pre-processed spectral signatures served as input features. The spectra pre-processing consisted of normalization, and second derivative and principal component extraction. MLP-ARD reached a high overall accuracy (90.32%) in the identification process. The research results establish the capacity of MLP-ARD to precisely identify systemically infected S. marianum weeds during their vegetative growth stage.
topic plant pathology
MLP-ARD
disease detection
artificial intelligence
precision agriculture
url http://www.mdpi.com/1424-8220/18/9/2770
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