| dc.description.abstract |
Cotton crop is among the leading source of income globally through its production is
harmed by many diseases which attack the leaves. Identification of these diseases is a
tedious, cumbersome, and prone to a lot of errors hence the need to come up with
automatic systems to detect them. This study presents a transfer learning-based approach
for the detection and classification of cotton leaf diseases, focusing on four primary
categories: bacterial blight, fusarium wilt, curl virus and apparently healthy one. To
support training and evaluation, 3418 images were gathered and preprocessed; this
involved resizing and normalization and augmentation to ensure generalization by the
developed model. The following five modern transfer learning models: ResNet50,
VGG16, DenseNet201, InceptionV3, and InceptionResNetV2 were adjusted to the
dataset. Accuracy was used to determine the ability of the models; Densenet201 recorded
the highest value of 99.71%, with VGG16 recording 99.41%, while InceptionResNetV2
recorded 98.98%. InceptionV3 made improved performance compared to the other
models in the test with the test accuracy 98.10 %, however Resnet50 had lower accuracy
at 81.14%. Accordingly, owing to the employment transfer learning the worksheets
incorporated proficient at feature extraction and disease pattern discovery in cotton
leaves. It is proved that the proposed system is not only effective for diseased and healthy
leaves and also for the prediction that may be uncertain at the end. This work gives a
solution in which cotton farmers will gain from as it can highlight on the disease and
perhaps reduce crop losses as they can be determined early. |
en_US |