dc.description.abstract | Agriculture is considered the backbone of Tanzania’s economy, with more
than 60% of the residents depending on it for survival. Maize is the country’s
dominant and primary food crop, accounting for 45% of all farmland production.
However, its productivity is challenged by the limitation to detect maize diseases
early enough. Maize streak virus (MSV) and maize lethal necrosis virus (MLN) are
common diseases often detected too late by farmers. This has led to the need
to develop a method for the early detection of these diseases so that they can
be treated on time. This study investigated the potential of developing deep-
learning models for the early detection of maize diseases in Tanzania. The
regions where data was collected are Arusha, Kilimanjaro, and Manyara. Data
was collected through observation by a plant. The study proposed convolutional
neural network (CNN) and vision transformer (ViT) models. Four classes of
imagery data were used to train both models: MLN, Healthy, MSV, and WRONG.
The results revealed that the ViT model surpassed the CNN model, with 93.1
and 90.96% accuracies, respectively. Further studies should focus on mobile
app development and deployment of the model with greater precision for early
detection of the diseases mentioned above in real life. | en_US |