• Corpus ID: 212471154

Classification of fungal and bacterial leaf diseases using machine learning techniques

  title={Classification of fungal and bacterial leaf diseases using machine learning techniques},
  author={N. Mandal and Yogesh Kumar Rathore},
  journal={International Journal of Advance Research, Ideas and Innovations in Technology},
  • N. MandalY. Rathore
  • Published 27 June 2018
  • Computer Science
  • International Journal of Advance Research, Ideas and Innovations in Technology
In Farming and Gardening, leaf diseases have grown to be a challenge as it can cause considerable reduction in both quality and measure of agricultural yields. Thus, automated recognition of diseases on leaves plays a vital role in Farming and Gardening sector. This Thesis imparts a simple and computationally dexterous method used for leaf disease identification and grading using digital image processing and machine learning method. The proposed system is divided into two phases, in the first… 

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