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    Potato Leaf Disease Recognition

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    BT4027_Report Project Final upto All page.pdf (2.199Mb)
    Date
    2023-05
    Author
    Ashish Kumar, Rajbanshi
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    Abstract
    Because crop species, crop disease symptoms, and environmental conditions vary, it might be difficult to detect potato leaf disease in its early stages. These elements make it challenging to spot potato leaf diseases in their early stages. To identify illnesses in potato leaves, numerous machine learning methods have been developed. The existing technology, however, is unable to identify crop species or crop diseases in general because these models are developed and evaluated using images of plant leaves from a particular region. A multi-level deep learning model for identifying potato leaf disease has been built in this study. Using the YOLOv5 image segmentation method, the first level of the algorithm extracts the potato leaves from the image of the potato plant.
    URI
    http://10.10.11.6/handle/1/18066
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