An implementation and analysis of deep learning models for the detection of wheat diseases
Date
2023-09Publisher
Brac UniversityAuthor
Zubair, AhmadKeya, Sharmin Akter
Shailee, Tasnia Zarin
Lenin, Syed Mahathir Md
Nandi, Dhruba
Metadata
Show full item recordAbstract
Detecting a disease visually is a time-consuming and error-prone operation, and
in the agricultural arena, for disease control, crop yield loss prediction, and global
food security, automatic and accurate evaluation of disease severity in crops is a
particularly demanding study area. Deep Learning (DL), the latest innovation in the
era of Artificial Intelligence (AI), is promising for fine-grained categorization of crop
diseases since it eliminates labor-intensive feature extraction and segmentation. To
diagnose the disease from photos, multiple pretrained models which are ResNet50,
EfficientNetB0 and InceptionV3 along with ViT and a hybrid CNN model have been
trained on the wheat disease dataset. Again, an ensemble model of the hybrid CNN
and the ViT has been proposed which has been compared with all the other models
and the proposed model gets the highest accuracy of 99.34% among all the models.