Carrot is a famous nutritional
vegetable and developed all over the world. Different diseases of
Carrot has become a massive issue in the carrot production circle which
leads to a tremendous effect on the economic growth in the agricultural
sector. An automatic carrot disease detection system can help to
identify malicious carrots and can provide a guide to cure carrot
disease in an earlier stage, resulting in a less economical loss in the
carrot production system. The proposed research study has developed a
web application “Carrot Cure” based on Convolutional Neural Network
(CNN), which can identify a defective carrot and provide a proper
curative solution. Images of carrots affected by cavity spot and leaf
bright as well as healthy images were collected. Further, this research
work has employed Convolutional Neural Network to include birth neural
purposes and a Fully Convolutional Neural Network model (FCNN) for
infection order. Different avenues regarding different convolutional
models with colorful layers are explored and the proposed Convolutional
model has achieved the perfection of 99.8%, which will be useful for the
drovers to distinguish carrot illness and boost their advantage,