Integrated analysis of machine learning and deep learning in chili pest and disease identification

BACKGROUND Chili is one of the most important and high-value vegetable crops worldwide. However, pest and disease infections are among the main limiting factors in chili cultivation. These diseases cannot be eradicated but can be handled and monitored to mitigate the damage. Hence, the use of an aut...

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Main Authors: Ahmad Loti, Nurul Nabilah, Mohd Noor, Mohamad Roff, Chang, Siow-Wee
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Published: Wiley 2021
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Online Access:http://eprints.um.edu.my/27618/
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spelling my.um.eprints.276182022-05-31T07:28:36Z http://eprints.um.edu.my/27618/ Integrated analysis of machine learning and deep learning in chili pest and disease identification Ahmad Loti, Nurul Nabilah Mohd Noor, Mohamad Roff Chang, Siow-Wee QD Chemistry S Agriculture (General) BACKGROUND Chili is one of the most important and high-value vegetable crops worldwide. However, pest and disease infections are among the main limiting factors in chili cultivation. These diseases cannot be eradicated but can be handled and monitored to mitigate the damage. Hence, the use of an automated identification system based on images will promote quick identification of chili disease. The features extracted from the images are of utmost importance to develop such an accurate identification system. RESULTS In this research, chili pest and disease features extracted using the traditional approach were compared with features extracted using a deep-learning-based approach. A total of 974 chili leaf images were collected, which consisted of five types of diseases, two types of pest infestations, and a healthy type. Six traditional feature-based approaches and six deep-learning feature-based approaches were used to extract significant pests and disease features from the chili leaf images. The extracted features were fed into three machine learning classifiers, namely a support vector machine (SVM), a random forest (RF), and an artificial neural network (ANN) for the identification task. The results showed that deep learning feature-based approaches performed better than the traditional feature-based approaches. The best accuracy of 92.10% was obtained with the SVM classifier. CONCLUSION A deep-learning feature-based approach could capture the details and characteristics between different types of chili pests and diseases even though they possessed similar visual patterns and symptoms. (c) 2020 Society of Chemical Industry Wiley 2021-07 Article PeerReviewed Ahmad Loti, Nurul Nabilah and Mohd Noor, Mohamad Roff and Chang, Siow-Wee (2021) Integrated analysis of machine learning and deep learning in chili pest and disease identification. Journal of the Science of Food and Agriculture, 101 (9). pp. 3582-3594. ISSN 0022-5142, DOI https://doi.org/10.1002/jsfa.10987 <https://doi.org/10.1002/jsfa.10987>. (In Press) 10.1002/jsfa.10987
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic QD Chemistry
S Agriculture (General)
spellingShingle QD Chemistry
S Agriculture (General)
Ahmad Loti, Nurul Nabilah
Mohd Noor, Mohamad Roff
Chang, Siow-Wee
Integrated analysis of machine learning and deep learning in chili pest and disease identification
description BACKGROUND Chili is one of the most important and high-value vegetable crops worldwide. However, pest and disease infections are among the main limiting factors in chili cultivation. These diseases cannot be eradicated but can be handled and monitored to mitigate the damage. Hence, the use of an automated identification system based on images will promote quick identification of chili disease. The features extracted from the images are of utmost importance to develop such an accurate identification system. RESULTS In this research, chili pest and disease features extracted using the traditional approach were compared with features extracted using a deep-learning-based approach. A total of 974 chili leaf images were collected, which consisted of five types of diseases, two types of pest infestations, and a healthy type. Six traditional feature-based approaches and six deep-learning feature-based approaches were used to extract significant pests and disease features from the chili leaf images. The extracted features were fed into three machine learning classifiers, namely a support vector machine (SVM), a random forest (RF), and an artificial neural network (ANN) for the identification task. The results showed that deep learning feature-based approaches performed better than the traditional feature-based approaches. The best accuracy of 92.10% was obtained with the SVM classifier. CONCLUSION A deep-learning feature-based approach could capture the details and characteristics between different types of chili pests and diseases even though they possessed similar visual patterns and symptoms. (c) 2020 Society of Chemical Industry
format Article
author Ahmad Loti, Nurul Nabilah
Mohd Noor, Mohamad Roff
Chang, Siow-Wee
author_facet Ahmad Loti, Nurul Nabilah
Mohd Noor, Mohamad Roff
Chang, Siow-Wee
author_sort Ahmad Loti, Nurul Nabilah
title Integrated analysis of machine learning and deep learning in chili pest and disease identification
title_short Integrated analysis of machine learning and deep learning in chili pest and disease identification
title_full Integrated analysis of machine learning and deep learning in chili pest and disease identification
title_fullStr Integrated analysis of machine learning and deep learning in chili pest and disease identification
title_full_unstemmed Integrated analysis of machine learning and deep learning in chili pest and disease identification
title_sort integrated analysis of machine learning and deep learning in chili pest and disease identification
publisher Wiley
publishDate 2021
url http://eprints.um.edu.my/27618/
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score 13.18916