Paddy Doctor: A Visual Image Dataset for Paddy Disease Classification

@article{Petchiammal2022PaddyDA,
  title={Paddy Doctor: A Visual Image Dataset for Paddy Disease Classification},
  author={A. Petchiammal and S BrisklineKiruba and Deepak Murugan and A Pandarasamy},
  journal={ArXiv},
  year={2022},
  volume={abs/2205.11108}
}
. One of the critical biotic stress factors paddy farmers face is diseases caused by bacteria, fungi, and other organisms. These diseases affect plants’ health severely and lead to significant crop loss. Most of these diseases can be identified by regularly observing the leaves and stems under expert supervision. In a country with vast agricultural re-gions and limited crop protection experts, manual identification of paddy diseases is challenging. Thus, to add a solution to this problem, it is nec… 

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