2024
DOI: 10.4108/eetiot.4834
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Enhancing Agricultural Sustainability with Deep Learning: A Case Study of Cauliflower Disease Classification

Nihar Ranjan Pradhan,
Hritwik Ghosh,
Irfan Sadiq Rahat
et al.

Abstract: The pivotal role of sustainable agriculture in ensuring food security and nurturing healthy farming communities is undeniable. Among the numerous challenges encountered in this domain, one key hurdle is the early detection and effective treatment of diseases impacting crops, specifically cauliflower.This research provides an in-depth exploration of the use of advanced DL algorithms to perform efficient identification and classification of cauliflower diseases. The study employed and scrutinized four leading DL… Show more

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Cited by 3 publications
(1 citation statement)
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“…Their study provides a fresh way to mental health monitoring and offers insights into the temporal dynamics of depression through the analysis of data collected passively using advanced computer algorithms. In a study on utilising deep learning to improve agricultural sustainability, Pradhan et al focused on the classi cation of cauli ower diseases [14]. This study provides as an example of how deep learning may be applied in agriculture, highlighting how it can enhance crop disease detection and support sustainable farming methods.In his assessment of the literature on the treatment of ankle fractures, Rashid (2023) [15] emphasises the high incidence of return to sports following a fracture, especially in the setting of sports medicine.…”
Section: Related Workmentioning
confidence: 99%
“…Their study provides a fresh way to mental health monitoring and offers insights into the temporal dynamics of depression through the analysis of data collected passively using advanced computer algorithms. In a study on utilising deep learning to improve agricultural sustainability, Pradhan et al focused on the classi cation of cauli ower diseases [14]. This study provides as an example of how deep learning may be applied in agriculture, highlighting how it can enhance crop disease detection and support sustainable farming methods.In his assessment of the literature on the treatment of ankle fractures, Rashid (2023) [15] emphasises the high incidence of return to sports following a fracture, especially in the setting of sports medicine.…”
Section: Related Workmentioning
confidence: 99%