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Fault Area Detection in Leaf Diseases using k-means Clustering

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arxiv 1810.10188 v1 pith:LMION4NP submitted 2018-10-24 cs.CV

Fault Area Detection in Leaf Diseases using k-means Clustering

classification cs.CV
keywords leafclusteringcrisisdetecteddiseasediseasesfaultyfood
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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With increasing population the crisis of food is getting bigger day by day.In this time of crisis,the leaf disease of crops is the biggest problem in the food industry.In this paper, we have addressed that problem and proposed an efficient method to detect leaf disease.Leaf diseases can be detected from sample images of the leaf with the help of image processing and segmentation.Using k-means clustering and Otsu's method the faulty region in a leaf is detected which helps to determine proper course of action to be taken.Further the ratio of normal and faulty region if calculated would be able to predict if the leaf can be cured at all.

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