• DocumentCode
    3729312
  • Title

    Fruit disease detection using color, texture analysis and ANN

  • Author

    Ashwini Awate;Damini Deshmankar;Gayatri Amrutkar;Utkarsha Bagul;Samadhan Sonavane

  • Author_Institution
    Dept. of Computer Engineering, Sandip Institute of Technology and Research Center, Sandip Foundation, Mahiravani, Nasik, Maharashtra, 422213, India
  • fYear
    2015
  • Firstpage
    970
  • Lastpage
    975
  • Abstract
    Now-a-days as there is prohibitive demand for agricultural industry, effective growth and improved yield of fruit is necessary and important. For this purpose farmers need manual monitoring of fruits from harvest till its progress period. But manual monitoring will not give satisfactory result all the times and they always need satisfactory advice from expert. So it requires proposing an efficient smart farming technique which will help for better yield and growth with less human efforts. We introduce a technique which will diagnose and classify external disease within fruits. Traditional system uses thousands of words which lead to boundary of language. Whereas system that we have come up with, uses image processing techniques for implementation as image is easy way for conveying. In the proposed work, OpenCV library is applied for implementation. K-means clustering method is applied for image segmentation, the images are catalogue and mapped to their respective disease categories on basis of four feature vectors color, morphology, texture and structure of hole on the fruit. The system uses two image databases, one for implementation of query images and the other for training of already stored disease images. Artificial Neural Network (ANN) concept is used for pattern matching and classification of diseases.
  • Keywords
    "Diseases","Feature extraction","Pipelines","Image segmentation","Image color analysis","Training","Artificial neural networks"
  • Publisher
    ieee
  • Conference_Titel
    Green Computing and Internet of Things (ICGCIoT), 2015 International Conference on
  • Type

    conf

  • DOI
    10.1109/ICGCIoT.2015.7380603
  • Filename
    7380603