dc.description.abstract | The timely and accurate diagnosis of plant diseases plays an important
role in preventing the loss of productivity and loss or reduced quantity
of agricultural products. In order to solve such problems, methods based
on machine learning can be used. In recent years, deep learning, which
is especially widely used in image processing, offers many new
applications related to precision agriculture. In this study, we
evaluated the performance results using different approaches of nine
powerful architectures of deep neural networks for plant disease
detection. Transfer learning and deep feature extraction methods are
used, which adapt these deep learning models to the problem at hand. The
utilized pretrained deep models are considered in the presented work for
feature extraction and for further fine-tuning. The obtained features
using deep feature extraction are then classified by support vector
machine (SVM), extreme learning machine (ELM), and K-nearest neighbor
(KNN) methods. The experiments are carried out using data consisting of
real disease and pest images from Turkey. The accuracy, sensitivity,
specificity, and F1-score are all calculated for performance evaluation.
The evaluation results show that deep feature extraction and SVM/ELM
classification produced better results than transfer learning. In
addition, the fc6 layers of the AlexNet, VGG16, and VGG19 models
produced better accuracy scores when compared to the other layers. | |