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Image-based automatic diagnostic system for tomato plants using deep learning

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Image-based automatic diagnostic system for tomato plants using deep learning. / Khatoon, Shaheen; Hasan, Md Maruf; Asif, Amna et al.
In: Computers, Materials and Continua, Vol. 67, No. 1, 12.01.2021, p. 595-612.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Khatoon, S, Hasan, MM, Asif, A, Alshmari, M & Yap, YK 2021, 'Image-based automatic diagnostic system for tomato plants using deep learning', Computers, Materials and Continua, vol. 67, no. 1, pp. 595-612. https://doi.org/10.32604/cmc.2021.014580

APA

Khatoon, S., Hasan, M. M., Asif, A., Alshmari, M., & Yap, Y. K. (2021). Image-based automatic diagnostic system for tomato plants using deep learning. Computers, Materials and Continua, 67(1), 595-612. https://doi.org/10.32604/cmc.2021.014580

Vancouver

Khatoon S, Hasan MM, Asif A, Alshmari M, Yap YK. Image-based automatic diagnostic system for tomato plants using deep learning. Computers, Materials and Continua. 2021 Jan 12;67(1):595-612. doi: 10.32604/cmc.2021.014580

Author

Khatoon, Shaheen ; Hasan, Md Maruf ; Asif, Amna et al. / Image-based automatic diagnostic system for tomato plants using deep learning. In: Computers, Materials and Continua. 2021 ; Vol. 67, No. 1. pp. 595-612.

Bibtex

@article{eb509af23cfe469e84012ffb50e4fe98,
title = "Image-based automatic diagnostic system for tomato plants using deep learning",
abstract = "Tomato production is affected by various threats, including pests, pathogens, and nutritional deficiencies during its growth process. If control is not timely, these threats affect the plant-growth, fruit-yield, or even loss of the entire crop, which is a key danger to farmers{\textquoteright} livelihood and food security. Traditional plant disease diagnosis methods heavily rely on plant pathologists that incur high processing time and huge cost. Rapid and cost-effective methods are essential for timely detection and early intervention of basic food threats to ensure food security and reduce substantial economic loss. Recent developments in Artificial Intelligence (AI) and computer vision allow researchers to develop image-based automatic diagnostic tools to quickly and accurately detect diseases. In this work, we proposed an AI-based approach to detect diseases in tomato plants. Our goal is to develop an end-to-end system to diagnose essential crop problems in real-time, ensuring high accuracy. This paper employs various deep learning models to recognize and predict different diseases caused by pathogens, pests, and nutritional deficiencies. Various Convolutional Neural Networks (CNNs) are trained on a large dataset of leaves and fruits images of tomato plants. We compared the performance of ShallowNet (a shallow network trained from scratch) and the state-of-the-art deep learning network (models are fine-tuned via transfer learning). In our experiments, DenseNet consistently achieved high performance with an accuracy score of 95.31% on the test dataset. The results verify that deep learning models with the least number of parameters, reasonable complexity, and appropriate depth achieve the best performance. All experiments are implemented in Python, utilizing the Keras deep learning library backend with TensorFlow.",
keywords = "Convolutional neural network, Deep learning, DenseNet, Disease classification and prediction, RestNet, Tomato plant, VGGNet",
author = "Shaheen Khatoon and Hasan, {Md Maruf} and Amna Asif and Majed Alshmari and Yap, {Yun Kiam}",
year = "2021",
month = jan,
day = "12",
doi = "10.32604/cmc.2021.014580",
language = "English",
volume = "67",
pages = "595--612",
journal = "Computers, Materials and Continua",
issn = "1546-2218",
publisher = "Tech Science Press",
number = "1",

}

RIS

TY - JOUR

T1 - Image-based automatic diagnostic system for tomato plants using deep learning

AU - Khatoon, Shaheen

AU - Hasan, Md Maruf

AU - Asif, Amna

AU - Alshmari, Majed

AU - Yap, Yun Kiam

PY - 2021/1/12

Y1 - 2021/1/12

N2 - Tomato production is affected by various threats, including pests, pathogens, and nutritional deficiencies during its growth process. If control is not timely, these threats affect the plant-growth, fruit-yield, or even loss of the entire crop, which is a key danger to farmers’ livelihood and food security. Traditional plant disease diagnosis methods heavily rely on plant pathologists that incur high processing time and huge cost. Rapid and cost-effective methods are essential for timely detection and early intervention of basic food threats to ensure food security and reduce substantial economic loss. Recent developments in Artificial Intelligence (AI) and computer vision allow researchers to develop image-based automatic diagnostic tools to quickly and accurately detect diseases. In this work, we proposed an AI-based approach to detect diseases in tomato plants. Our goal is to develop an end-to-end system to diagnose essential crop problems in real-time, ensuring high accuracy. This paper employs various deep learning models to recognize and predict different diseases caused by pathogens, pests, and nutritional deficiencies. Various Convolutional Neural Networks (CNNs) are trained on a large dataset of leaves and fruits images of tomato plants. We compared the performance of ShallowNet (a shallow network trained from scratch) and the state-of-the-art deep learning network (models are fine-tuned via transfer learning). In our experiments, DenseNet consistently achieved high performance with an accuracy score of 95.31% on the test dataset. The results verify that deep learning models with the least number of parameters, reasonable complexity, and appropriate depth achieve the best performance. All experiments are implemented in Python, utilizing the Keras deep learning library backend with TensorFlow.

AB - Tomato production is affected by various threats, including pests, pathogens, and nutritional deficiencies during its growth process. If control is not timely, these threats affect the plant-growth, fruit-yield, or even loss of the entire crop, which is a key danger to farmers’ livelihood and food security. Traditional plant disease diagnosis methods heavily rely on plant pathologists that incur high processing time and huge cost. Rapid and cost-effective methods are essential for timely detection and early intervention of basic food threats to ensure food security and reduce substantial economic loss. Recent developments in Artificial Intelligence (AI) and computer vision allow researchers to develop image-based automatic diagnostic tools to quickly and accurately detect diseases. In this work, we proposed an AI-based approach to detect diseases in tomato plants. Our goal is to develop an end-to-end system to diagnose essential crop problems in real-time, ensuring high accuracy. This paper employs various deep learning models to recognize and predict different diseases caused by pathogens, pests, and nutritional deficiencies. Various Convolutional Neural Networks (CNNs) are trained on a large dataset of leaves and fruits images of tomato plants. We compared the performance of ShallowNet (a shallow network trained from scratch) and the state-of-the-art deep learning network (models are fine-tuned via transfer learning). In our experiments, DenseNet consistently achieved high performance with an accuracy score of 95.31% on the test dataset. The results verify that deep learning models with the least number of parameters, reasonable complexity, and appropriate depth achieve the best performance. All experiments are implemented in Python, utilizing the Keras deep learning library backend with TensorFlow.

KW - Convolutional neural network

KW - Deep learning

KW - DenseNet

KW - Disease classification and prediction

KW - RestNet

KW - Tomato plant

KW - VGGNet

U2 - 10.32604/cmc.2021.014580

DO - 10.32604/cmc.2021.014580

M3 - Journal article

AN - SCOPUS:85099408793

VL - 67

SP - 595

EP - 612

JO - Computers, Materials and Continua

JF - Computers, Materials and Continua

SN - 1546-2218

IS - 1

ER -