DOI:10.20894/IJCOA.
Periodicity: Bi Annual.
Impact Factor:
SJIF:5.079 & GIF:0.416
Submission:Any Time
Publisher: IIR Groups
Language: English
Review Process:
Double Blinded

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IJCOA special issue invites the papers from the NATIONAL CONFERENCE, INTERNATIONAL CONFERENCE, SEMINAR conducted by colleges, university, etc. The Group of paper will accept with some concession and will publish in IJCOA website. For complete procedure, contact us at admin@iirgroups.org

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Published in:   Vol. 7 Issue 1 Date of Publication:   June 2018
Page(s):   40-43 Publisher:   Integrated Intelligent Research (IIR)
DOI:   10.20894/IJCOA.101.007.001.009 SAI : 2016SCIA316F0907

In this paper, we suggest a model for the automatic detection and classification of nutrient deficiencies in plant leaves. In an agricultural country like India, farmers are facing lot of problems in detecting the causes for the diseases in plants. Only when the causes are sorted out, the solution can be found to treat them. With naked-eye observation it is difficult to classify the deficiency present in leaves. So with the help of image processing algorithms, we have proposed a model to detect the type of deficiencies in the leaves. The color and texture features are used to recognize and classify the deficiencies. The combinations of features prove to be very effective in deficiency detection. This paper presents an effective method for detection of nutrient deficiencies in leaves using color-texture analysis and k-means clustering.