Plant Disease Diagnosis for Smart Phone Applications with Extensible Set of Diseases

A plant disease diagnosis method that can be implemented with the resources of a mobile phone application, that does not have to be connected to a remote server, is presented and evaluated on citrus diseases. It can be used both by amateur gardeners and by professional agriculturists for early detec...

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Main Author: Nikos Petrellis
Format: Article
Language:English
Published: MDPI AG 2019-05-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/9/9/1952
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spelling doaj-5cac6b9ff20b4d45b7cce74a488ae7722020-11-25T01:18:01ZengMDPI AGApplied Sciences2076-34172019-05-0199195210.3390/app9091952app9091952Plant Disease Diagnosis for Smart Phone Applications with Extensible Set of DiseasesNikos Petrellis0Computer Science and Engineering Department, University of Thessaly, 41110 Larissa, GreeceA plant disease diagnosis method that can be implemented with the resources of a mobile phone application, that does not have to be connected to a remote server, is presented and evaluated on citrus diseases. It can be used both by amateur gardeners and by professional agriculturists for early detection of diseases. The features used are extracted from photographs of plant parts like leaves or fruits and include the color, the relative area and the number of the lesion spots. These classification features, along with additional information like weather metadata, form disease signatures that can be easily defined by the end user (e.g., an agronomist). These signatures are based on the statistical processing of a small number of representative training photographs. The extracted features of a test photograph are compared against the disease signatures in order to select the most likely disease. An important advantage of the proposed approach is that the diagnosis does not depend on the orientation, the scale or the resolution of the photograph. The experiments have been conducted under several light exposure conditions. The accuracy was experimentally measured between 70% and 99%. An acceptable accuracy higher than 90% can be achieved in most of the cases since the lesion spots can recognized interactively with high precision.https://www.mdpi.com/2076-3417/9/9/1952plant diseasesmart phone applicationimage processingclassificationsegmentationcitrus diseases
collection DOAJ
language English
format Article
sources DOAJ
author Nikos Petrellis
spellingShingle Nikos Petrellis
Plant Disease Diagnosis for Smart Phone Applications with Extensible Set of Diseases
Applied Sciences
plant disease
smart phone application
image processing
classification
segmentation
citrus diseases
author_facet Nikos Petrellis
author_sort Nikos Petrellis
title Plant Disease Diagnosis for Smart Phone Applications with Extensible Set of Diseases
title_short Plant Disease Diagnosis for Smart Phone Applications with Extensible Set of Diseases
title_full Plant Disease Diagnosis for Smart Phone Applications with Extensible Set of Diseases
title_fullStr Plant Disease Diagnosis for Smart Phone Applications with Extensible Set of Diseases
title_full_unstemmed Plant Disease Diagnosis for Smart Phone Applications with Extensible Set of Diseases
title_sort plant disease diagnosis for smart phone applications with extensible set of diseases
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2019-05-01
description A plant disease diagnosis method that can be implemented with the resources of a mobile phone application, that does not have to be connected to a remote server, is presented and evaluated on citrus diseases. It can be used both by amateur gardeners and by professional agriculturists for early detection of diseases. The features used are extracted from photographs of plant parts like leaves or fruits and include the color, the relative area and the number of the lesion spots. These classification features, along with additional information like weather metadata, form disease signatures that can be easily defined by the end user (e.g., an agronomist). These signatures are based on the statistical processing of a small number of representative training photographs. The extracted features of a test photograph are compared against the disease signatures in order to select the most likely disease. An important advantage of the proposed approach is that the diagnosis does not depend on the orientation, the scale or the resolution of the photograph. The experiments have been conducted under several light exposure conditions. The accuracy was experimentally measured between 70% and 99%. An acceptable accuracy higher than 90% can be achieved in most of the cases since the lesion spots can recognized interactively with high precision.
topic plant disease
smart phone application
image processing
classification
segmentation
citrus diseases
url https://www.mdpi.com/2076-3417/9/9/1952
work_keys_str_mv AT nikospetrellis plantdiseasediagnosisforsmartphoneapplicationswithextensiblesetofdiseases
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