A Systematic Literature Review of Machine Learning Techniques Deployed in Agriculture: A Case Study of Banana Crop

Agricultural productivity is the asset on which the world’s economy thoroughly relies. This is one of the major causes that disease identification in fruits and plants occupies a salient role in farming space, as having disease disorders in them is obvious. There is a need to carry genuin...

Full description

Bibliographic Details
Main Authors: Priyanka Sahu, Amit Prakash Singh, Anuradha Chug, Dinesh Singh
Format: Article
Language:English
Published: IEEE 2022-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9861649/
_version_ 1811203958694215680
author Priyanka Sahu
Amit Prakash Singh
Anuradha Chug
Dinesh Singh
author_facet Priyanka Sahu
Amit Prakash Singh
Anuradha Chug
Dinesh Singh
author_sort Priyanka Sahu
collection DOAJ
description Agricultural productivity is the asset on which the world’s economy thoroughly relies. This is one of the major causes that disease identification in fruits and plants occupies a salient role in farming space, as having disease disorders in them is obvious. There is a need to carry genuine supervision to avoid crucial consequences in vegetation; otherwise, corresponding vegetation standards, quantity, and productiveness gets affected. At present, a recognition system is required in the food handling industries to uplift the effectiveness of productivity to cope with demand in the community. The study has been carried out to perform a systematic literature review of research papers that deployed machine learning (ML) techniques in agriculture, applicable to the banana plant and fruit production. Thus; it could help upcoming researchers in their endeavors to identify the level and kind of research done so far. The authors investigated the problems related to banana crops such as disease classification, chilling injuries detection, ripeness, moisture content, etc. Moreover, the authors have also reviewed the deployed frameworks based on ML, sources of data collection, and the comprehensive results achieved for each study. Furthermore, ML architectures/techniques were evaluated using a range of performance measures. It has been observed that some studies used the PlantVillage dataset, a few have used Godliver and Scotnelson dataset, and the rest were based on either real-field image acquisition or on limited private datasets. Hence, more datasets are needed to be acquired to enhance the disease identification process and to handle the other kind of problems (e.g. chilling injuries detection, ripeness, etc.) present in the crops. Furthermore, the authors have also carried out a comparison of popular ML techniques like support vector machines, convolutional neural networks, regression, etc. to make differences in their performance. In this study, several research gaps are addressed, allowing for increased transparency in identifying different diseases even before symptoms arise and also for monitoring the above-mentioned problems related to crops.
first_indexed 2024-04-12T03:03:43Z
format Article
id doaj.art-3adf9e5e2a5a4925bc8b830a0cd43754
institution Directory Open Access Journal
issn 2169-3536
language English
last_indexed 2024-04-12T03:03:43Z
publishDate 2022-01-01
publisher IEEE
record_format Article
series IEEE Access
spelling doaj.art-3adf9e5e2a5a4925bc8b830a0cd437542022-12-22T03:50:33ZengIEEEIEEE Access2169-35362022-01-0110873338736010.1109/ACCESS.2022.31999269861649A Systematic Literature Review of Machine Learning Techniques Deployed in Agriculture: A Case Study of Banana CropPriyanka Sahu0https://orcid.org/0000-0002-0213-2926Amit Prakash Singh1Anuradha Chug2https://orcid.org/0000-0002-3139-4490Dinesh Singh3University School of Information, Communication, Technology, Guru Gobind Singh Indraprastha University, New Delhi, IndiaUniversity School of Information, Communication, Technology, Guru Gobind Singh Indraprastha University, New Delhi, IndiaUniversity School of Information, Communication, Technology, Guru Gobind Singh Indraprastha University, New Delhi, IndiaDivision of Plant Pathology, Indian Agricultural Research Institute, New Delhi, IndiaAgricultural productivity is the asset on which the world’s economy thoroughly relies. This is one of the major causes that disease identification in fruits and plants occupies a salient role in farming space, as having disease disorders in them is obvious. There is a need to carry genuine supervision to avoid crucial consequences in vegetation; otherwise, corresponding vegetation standards, quantity, and productiveness gets affected. At present, a recognition system is required in the food handling industries to uplift the effectiveness of productivity to cope with demand in the community. The study has been carried out to perform a systematic literature review of research papers that deployed machine learning (ML) techniques in agriculture, applicable to the banana plant and fruit production. Thus; it could help upcoming researchers in their endeavors to identify the level and kind of research done so far. The authors investigated the problems related to banana crops such as disease classification, chilling injuries detection, ripeness, moisture content, etc. Moreover, the authors have also reviewed the deployed frameworks based on ML, sources of data collection, and the comprehensive results achieved for each study. Furthermore, ML architectures/techniques were evaluated using a range of performance measures. It has been observed that some studies used the PlantVillage dataset, a few have used Godliver and Scotnelson dataset, and the rest were based on either real-field image acquisition or on limited private datasets. Hence, more datasets are needed to be acquired to enhance the disease identification process and to handle the other kind of problems (e.g. chilling injuries detection, ripeness, etc.) present in the crops. Furthermore, the authors have also carried out a comparison of popular ML techniques like support vector machines, convolutional neural networks, regression, etc. to make differences in their performance. In this study, several research gaps are addressed, allowing for increased transparency in identifying different diseases even before symptoms arise and also for monitoring the above-mentioned problems related to crops.https://ieeexplore.ieee.org/document/9861649/Machine learningbananadiseasesimagingclassificationripeness
spellingShingle Priyanka Sahu
Amit Prakash Singh
Anuradha Chug
Dinesh Singh
A Systematic Literature Review of Machine Learning Techniques Deployed in Agriculture: A Case Study of Banana Crop
IEEE Access
Machine learning
banana
diseases
imaging
classification
ripeness
title A Systematic Literature Review of Machine Learning Techniques Deployed in Agriculture: A Case Study of Banana Crop
title_full A Systematic Literature Review of Machine Learning Techniques Deployed in Agriculture: A Case Study of Banana Crop
title_fullStr A Systematic Literature Review of Machine Learning Techniques Deployed in Agriculture: A Case Study of Banana Crop
title_full_unstemmed A Systematic Literature Review of Machine Learning Techniques Deployed in Agriculture: A Case Study of Banana Crop
title_short A Systematic Literature Review of Machine Learning Techniques Deployed in Agriculture: A Case Study of Banana Crop
title_sort systematic literature review of machine learning techniques deployed in agriculture a case study of banana crop
topic Machine learning
banana
diseases
imaging
classification
ripeness
url https://ieeexplore.ieee.org/document/9861649/
work_keys_str_mv AT priyankasahu asystematicliteraturereviewofmachinelearningtechniquesdeployedinagricultureacasestudyofbananacrop
AT amitprakashsingh asystematicliteraturereviewofmachinelearningtechniquesdeployedinagricultureacasestudyofbananacrop
AT anuradhachug asystematicliteraturereviewofmachinelearningtechniquesdeployedinagricultureacasestudyofbananacrop
AT dineshsingh asystematicliteraturereviewofmachinelearningtechniquesdeployedinagricultureacasestudyofbananacrop
AT priyankasahu systematicliteraturereviewofmachinelearningtechniquesdeployedinagricultureacasestudyofbananacrop
AT amitprakashsingh systematicliteraturereviewofmachinelearningtechniquesdeployedinagricultureacasestudyofbananacrop
AT anuradhachug systematicliteraturereviewofmachinelearningtechniquesdeployedinagricultureacasestudyofbananacrop
AT dineshsingh systematicliteraturereviewofmachinelearningtechniquesdeployedinagricultureacasestudyofbananacrop