• Corpus ID: 40918307

Paper On : Agricultural Plant Leaf Disease Detection Using Image Processing

@inproceedings{Shire2015PaperO,
  title={Paper On : Agricultural Plant Leaf Disease Detection Using Image Processing},
  author={Atul N. Shire and Umesh Jawarkar and Mr. Manoj Manmode},
  year={2015}
}
This paper provides survey on leaf disease detection technique by using image processing. India is an agricultural country and most of peoples wherein about 70% depends on agricultural. So leaf disease detection is very important research topic. Number of crops caused by fungi, bacteria etc. To overcomes this by using automatic leaf detection of plant by different image processing technique. 
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