Mango leaf disease detection using image processing
Abstract
Bangladesh is an agricultural country and mango cultivation plays a significant role
in the economy of Bangladesh. Mango trees are at risk of different kinds of leaf
disease. As a result, it can be the reason for hindering food production and quality
substantially. So, it is very much important for the farmers to timely detection of
these diseases. As a result, farmers can ensure stable production and supply. So, in
this thesis, we have provided a custom convolutional neural network (CNN) architecture
that was designed especially for mango leaf disease detection in Bangladesh.
Our dataset consists of over 7,535 images that show both affected and healthy mango
leaves, exposing nine different leaf classifications. We have trained our custom CNN
model through both healthy and sick images so that it can easily distinguish between
affected and non-affected mango leaves. We have compared our custom CNN model
with a few pre-trained models which are MobileNetV2, VGG16, DenseNet169, and
InceptionV3 to evaluate our model’s performance and accuracy. So, the main motive
of our thesis is to overcome the limitations of the previous research. Therefore, our
suggested work is very much determined to be very accurate and to solve critical
issues earlier researchers might have faced.