Classification of cotton crop disease using hybrid model and MDFC feature extraction method
Padma P. Nimbhore,
Ritu Tiwari,
Tanmoy Hazra
et al.
Abstract:A novel Modified Deep Fuzzy Clustering (MDFC) based classification model involves four major phases. They are preprocessing, segmentation, feature extraction and finally, detection and classification phase. To reduce noise and smooth the edges of the input image of the cotton crop, bilateral filtering is first used as a preprocessing approach. Next, a modified deep fuzzy clustering is suggested for the segmentation procedure that creates a collection of segments from the preprocessed image. The segmented image… Show more
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