Deep Learning Methods for Identifying Diseases in Plants: A Survey

Authors

  • Raji N., S. Manohar

Keywords:

Deep Learning, Plant Disease Identification, Agricultural Diseases

Abstract

Deep learning which can be considered as a subset of machine learning which again is a subset of artificial intelligence is a recent trend on which researches are being carried out. Deep learning and transfer learning are two different approaches connected with the process of identifying various plant illnesses. This research focuses on deep learning approaches and highlights current advancements in the application of these cutting-edge technology to agricultural disease picture recognition. The summary of deep learning approaches used to identify various illnesses in plants such as tomato, strawberry, peach, onion, corn, and so on...

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Published

23.02.2024

How to Cite

Raji N. (2024). Deep Learning Methods for Identifying Diseases in Plants: A Survey. International Journal of Intelligent Systems and Applications in Engineering, 12(17s), 860–867. Retrieved from https://www.ijisae.org/index.php/IJISAE/article/view/7058

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Research Article