Systematic Review of the Early Detection and Classification of Plant Diseases Using Deep Learning

Deep learning (DL) addresses the brilliant period of Artificial intelligence (AI) and is slowly developing into the main technique in numerous fields. Currently it assumes a significant part in the early location and order of plant diseases. Plant diseases have long been one of the main threats to f...

Full description

Bibliographic Details
Main Authors: Derisma, Derisma, Rokhman, Nur, Usuman, Ilona
Format: Conference or Workshop Item
Language:English
Published: 2022
Subjects:
Online Access:https://repository.ugm.ac.id/281865/1/Derisma_2022_IOP_Conf._Ser.%20_Earth_Environ._Sci._1097_012042.pdf
_version_ 1797037489766006784
author Derisma, Derisma
Rokhman, Nur
Usuman, Ilona
author_facet Derisma, Derisma
Rokhman, Nur
Usuman, Ilona
author_sort Derisma, Derisma
collection UGM
description Deep learning (DL) addresses the brilliant period of Artificial intelligence (AI) and is slowly developing into the main technique in numerous fields. Currently it assumes a significant part in the early location and order of plant diseases. Plant diseases have long been one of the main threats to food security, significantly reducing crop yields and quality. Therefore accurate disease diagnosis is the main goal. The utilization of machine learning (ML) innovation in this space is accepted to have prompted a huge expansion in usefulness in the hydroponics area, particularly in the new rise of ML which appears to expand the degree of precision. As the latest modern technology in image processing and successful application in various fields, deep learning has great potential and broad prospects in agriculture. This paper surveys 40 studies using deep learning methods applied to agriculture and food production. In this study, deep learning is compared to other popular image processing techniques. The findings show that deep learning provides better performance. Future directions may additionally consist of the usage of drones and agricultural robots to automate photo seize and then zooming in on plant sickness image datasets, using newly posted fashions that describe more efficient architectures with fewer parameters, as well as the use of new techniques for photograph enlargement inclusive of generative adversarial networks (GANs). © Published under licence by IOP Publishing Ltd.
first_indexed 2024-03-14T00:04:07Z
format Conference or Workshop Item
id oai:generic.eprints.org:281865
institution Universiti Gadjah Mada
language English
last_indexed 2024-03-14T00:04:07Z
publishDate 2022
record_format dspace
spelling oai:generic.eprints.org:2818652023-11-15T00:37:06Z https://repository.ugm.ac.id/281865/ Systematic Review of the Early Detection and Classification of Plant Diseases Using Deep Learning Derisma, Derisma Rokhman, Nur Usuman, Ilona Plant Biology Plant Pathology Deep learning (DL) addresses the brilliant period of Artificial intelligence (AI) and is slowly developing into the main technique in numerous fields. Currently it assumes a significant part in the early location and order of plant diseases. Plant diseases have long been one of the main threats to food security, significantly reducing crop yields and quality. Therefore accurate disease diagnosis is the main goal. The utilization of machine learning (ML) innovation in this space is accepted to have prompted a huge expansion in usefulness in the hydroponics area, particularly in the new rise of ML which appears to expand the degree of precision. As the latest modern technology in image processing and successful application in various fields, deep learning has great potential and broad prospects in agriculture. This paper surveys 40 studies using deep learning methods applied to agriculture and food production. In this study, deep learning is compared to other popular image processing techniques. The findings show that deep learning provides better performance. Future directions may additionally consist of the usage of drones and agricultural robots to automate photo seize and then zooming in on plant sickness image datasets, using newly posted fashions that describe more efficient architectures with fewer parameters, as well as the use of new techniques for photograph enlargement inclusive of generative adversarial networks (GANs). © Published under licence by IOP Publishing Ltd. 2022 Conference or Workshop Item PeerReviewed application/pdf en https://repository.ugm.ac.id/281865/1/Derisma_2022_IOP_Conf._Ser.%20_Earth_Environ._Sci._1097_012042.pdf Derisma, Derisma and Rokhman, Nur and Usuman, Ilona (2022) Systematic Review of the Early Detection and Classification of Plant Diseases Using Deep Learning. In: IOP Conference Series: Earth and Environmental Science. https://iopscience.iop.org/article/10.1088/1755-1315/1097/1/012042/pdf
spellingShingle Plant Biology
Plant Pathology
Derisma, Derisma
Rokhman, Nur
Usuman, Ilona
Systematic Review of the Early Detection and Classification of Plant Diseases Using Deep Learning
title Systematic Review of the Early Detection and Classification of Plant Diseases Using Deep Learning
title_full Systematic Review of the Early Detection and Classification of Plant Diseases Using Deep Learning
title_fullStr Systematic Review of the Early Detection and Classification of Plant Diseases Using Deep Learning
title_full_unstemmed Systematic Review of the Early Detection and Classification of Plant Diseases Using Deep Learning
title_short Systematic Review of the Early Detection and Classification of Plant Diseases Using Deep Learning
title_sort systematic review of the early detection and classification of plant diseases using deep learning
topic Plant Biology
Plant Pathology
url https://repository.ugm.ac.id/281865/1/Derisma_2022_IOP_Conf._Ser.%20_Earth_Environ._Sci._1097_012042.pdf
work_keys_str_mv AT derismaderisma systematicreviewoftheearlydetectionandclassificationofplantdiseasesusingdeeplearning
AT rokhmannur systematicreviewoftheearlydetectionandclassificationofplantdiseasesusingdeeplearning
AT usumanilona systematicreviewoftheearlydetectionandclassificationofplantdiseasesusingdeeplearning