Recognizing apple leaf diseases using a novel parallel real‐time processing framework based on MASK RCNN and transfer learning: An application for smart agriculture
Abstract Effective recognition of fruit leaf diseases has a substantial impact on agro‐based economies. Several fruit diseases exist that badly impact the yield and quality of fruits. A naked‐eye inspection of an infected region is a difficult and tedious process; therefore, it is required to have a...
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Online Access: | https://doi.org/10.1049/ipr2.12183 |
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doaj-3041e6401c03498e8be163a03f7421972021-07-22T05:40:40ZengWileyIET Image Processing1751-96591751-96672021-08-0115102157216810.1049/ipr2.12183Recognizing apple leaf diseases using a novel parallel real‐time processing framework based on MASK RCNN and transfer learning: An application for smart agricultureZia ur Rehman0Muhammad Attique Khan1Fawad Ahmed2Robertas Damaševičius3Syed Rameez Naqvi4Wasif Nisar5Kashif Javed6Department of Electrical Engineering HITEC University Taxila Taxila PakistanDepartment of Computer Science HITEC University Taxila Taxila PakistanDepartment of Electrical Engineering HITEC University Taxila Taxila PakistanFaculty of Applied Mathematics Silesian University of Technology Gliwice PolandDepartment of Electrical & Computer Engineering COMSATS University Islamabad Wah Campus Wah Cantt PakistanDepartment of Computer Science COMSATS University Islamabad Wah Campus Wah Cantt PakistanDepartment of Robotics SMME Nust Islamabad PakistanAbstract Effective recognition of fruit leaf diseases has a substantial impact on agro‐based economies. Several fruit diseases exist that badly impact the yield and quality of fruits. A naked‐eye inspection of an infected region is a difficult and tedious process; therefore, it is required to have an automated system for accurate recognition of the disease. It is widely understood that low contrast images affect identification and classification accuracy. Here a parallel framework for real‐time apple leaf disease identification and classification is proposed. Initially, a hybrid contrast stretching method to increase the visual impact of an image is proposed and then the MASK RCNN is configured to detect the infected regions. In parallel, the enhanced images are utilized for training a pre‐trained CNN model for features extraction. The Kapur's entropy along MSVM (EaMSVM) approach‐based selection method is developed to select strong features for the final classification. The Plant Village dataset is employed for the experimental process and achieve the best accuracy of 96.6% on the ensemble subspace discriminant analysis (ESDA) classifier. A comparison with the previous techniques illustrates the superiority of the proposed framework.https://doi.org/10.1049/ipr2.12183 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Zia ur Rehman Muhammad Attique Khan Fawad Ahmed Robertas Damaševičius Syed Rameez Naqvi Wasif Nisar Kashif Javed |
spellingShingle |
Zia ur Rehman Muhammad Attique Khan Fawad Ahmed Robertas Damaševičius Syed Rameez Naqvi Wasif Nisar Kashif Javed Recognizing apple leaf diseases using a novel parallel real‐time processing framework based on MASK RCNN and transfer learning: An application for smart agriculture IET Image Processing |
author_facet |
Zia ur Rehman Muhammad Attique Khan Fawad Ahmed Robertas Damaševičius Syed Rameez Naqvi Wasif Nisar Kashif Javed |
author_sort |
Zia ur Rehman |
title |
Recognizing apple leaf diseases using a novel parallel real‐time processing framework based on MASK RCNN and transfer learning: An application for smart agriculture |
title_short |
Recognizing apple leaf diseases using a novel parallel real‐time processing framework based on MASK RCNN and transfer learning: An application for smart agriculture |
title_full |
Recognizing apple leaf diseases using a novel parallel real‐time processing framework based on MASK RCNN and transfer learning: An application for smart agriculture |
title_fullStr |
Recognizing apple leaf diseases using a novel parallel real‐time processing framework based on MASK RCNN and transfer learning: An application for smart agriculture |
title_full_unstemmed |
Recognizing apple leaf diseases using a novel parallel real‐time processing framework based on MASK RCNN and transfer learning: An application for smart agriculture |
title_sort |
recognizing apple leaf diseases using a novel parallel real‐time processing framework based on mask rcnn and transfer learning: an application for smart agriculture |
publisher |
Wiley |
series |
IET Image Processing |
issn |
1751-9659 1751-9667 |
publishDate |
2021-08-01 |
description |
Abstract Effective recognition of fruit leaf diseases has a substantial impact on agro‐based economies. Several fruit diseases exist that badly impact the yield and quality of fruits. A naked‐eye inspection of an infected region is a difficult and tedious process; therefore, it is required to have an automated system for accurate recognition of the disease. It is widely understood that low contrast images affect identification and classification accuracy. Here a parallel framework for real‐time apple leaf disease identification and classification is proposed. Initially, a hybrid contrast stretching method to increase the visual impact of an image is proposed and then the MASK RCNN is configured to detect the infected regions. In parallel, the enhanced images are utilized for training a pre‐trained CNN model for features extraction. The Kapur's entropy along MSVM (EaMSVM) approach‐based selection method is developed to select strong features for the final classification. The Plant Village dataset is employed for the experimental process and achieve the best accuracy of 96.6% on the ensemble subspace discriminant analysis (ESDA) classifier. A comparison with the previous techniques illustrates the superiority of the proposed framework. |
url |
https://doi.org/10.1049/ipr2.12183 |
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