2024
DOI: 10.38124/ijisrt/ijisrt24mar1459
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Exploring Deep Learning Approaches for Citrus Diseases Detection and Classification: A Review

Abdullahi Lawal Rukuna,
F. U. Zambuk,
A. Y. Gital
et al.

Abstract: Citrus diseases pose significant threats to global agriculture, impacting crop yield and quality. In recent years the integration of deep learning models has surfaced as a hopeful method for classifying and detecting diseases. This review critically analyzes and synthesizes 25 research works that explore various deep learning models applications in citrus disease detection and classification. The methodology involves a systematic literature search, filtering based on relevance, publication date, and language. … Show more

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