dc.description.abstract |
This study explores the application of deep learning models for the detection of rice leaf
diseases, a critical issue impacting global rice production and food security. The research
focuses on five advanced deep learning architectures: Convolutional Neural Network
(CNN), Xception, VGG19, MobileNetV2, and InceptionResNetV2. Utilizing a dataset
comprising 6,420 images across four disease categories—Brown Spot, Tungro, Bacterial
Blight, and Blast—each model was trained and evaluated to determine its accuracy and
effectiveness in disease classification. The proposed methodology encompasses data
collection, labeling, image processing, model selection, training, evaluation, and testing.
Results demonstrated that the CNN model achieved the highest accuracy at 98.44%,
followed closely by MobileNetV2 at 97.82%, VGG19 at 96.57%, InceptionResNetV2 at
95.43%, and Xception at 95.07%. These high accuracies underscore the potential of deep
learning models in early disease detection, which is crucial for timely intervention and
effective crop management. Comparative analysis with traditional machine learning
approaches such as Support Vector Machines (SVM) and Decision Trees, which typically
yielded lower accuracies between 81.8% and 97%, highlights the superior performance of
deep learning techniques. Furthermore, the study discusses the ethical considerations,
including data privacy, accessibility for small-scale farmers, and the need for unbiased
models, ensuring equitable benefits across diverse agricultural contexts. |
en_US |