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Verma, S., Chug, A. and Singh, A.P. (2020) Impact of Hyperparameter Tuning on Deep Learning Based Estimation of Disease Severity in Grape Plant. In: Ghazali, R., Nawi, N., Deris, M. and Abawajy, J., Eds., SCDM 2020: Recent Advances on Soft Computing and Data Mining, Springer, Cham, 161-171.
https://doi.org/10.1007/978-3-030-36056-6_16
has been cited by the following article:
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TITLE:
Plant Disease Severity Assessment Based on Machine Learning and Deep Learning: A Survey
AUTHORS:
Demba Faye, Idy Diop, Nalla Mbaye, Doudou Dione, Marius Mintu Diedhiou
KEYWORDS:
Plant, Disease, Severity, Machine Learning, Deep Learning
JOURNAL NAME:
Journal of Computer and Communications,
Vol.11 No.9,
September
26,
2023
ABSTRACT: The world’s agricultural production suffers huge losses estimated between 20% and 40% annually. 40% to 50% of such losses are due to pest and diseases which cause significant economic losses every year. Precise assessment of severity is crucial for suitable management of crop diseases. It helps famers to avoid yield losses, reduce production costs, ensure good disease management and so on. This paper is a review of plant diseases severity estimation solutions proposed by researchers the last few years and based on Image Processing Techniques (IPT), classical Machine Learning (ML) and Deep Learning (DL) algorithms. The analysis of these solutions has allowed us to identify their limitations and potential challenges in plant disease severity assessment.