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Leaf Disease Identification using CNN and Raspberry PI

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Figure

Fig. 1. A general CNN architecture
Fig 4: Flow Chart depicting overview of the process
Fig 5:  Overview of the Implementation
Fig 6: Sample segmented images resized to 64x64pixels a) healthy leaf image taken under a constant background b) healthy leaf  image taken in uncontrolled environment [ce] leaf images from a plant affected by: c) septorial leaf blight d) frogeye leaf spot e) downy mildew
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