Onion Diseases Classifications by using Deep Learning Techniques
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ASTU
Abstract
The majority of Ethiopians continue to rely heavily on the agricultural sector, which remains
one of the most significant industries in the country. This sector faces numerous challenges,
including plant diseases that negatively impact yield quality and productivity. Early detection
and accurate diagnosis of onion health are crucial for preventing the spread of various plant
diseases, ideally through the use of technology rather than manual labor. Onion crops play a
vital role in Ethiopian agriculture, significantly contributing to food security and livelihoods.
However, onion diseases have resulted in substantial losses and reduced yields. Traditional
observation methods used by farmers and agricultural experts can be time-consuming, costly,
and sometimes inaccurate. Deep learning techniques provide some of the most effective models
for identifying plant diseases. Convolutional Neural Networks (CNNs) are a prominent
approach, consisting of multiple processing layers that learn to represent images at varying
levels of abstraction. These models have greatly advanced visual object recognition and image
classification, making them well-suited for detecting and classifying onion leaf diseases. The
primary objective of this study was to design and develop a deep learning-based model for
identifying and classifying the three most critical onion leaf diseases: Downy Mildew, Onion
Leaf Blight, and Bacterial Soft Rot. A total of 12,438 images, including augmented images
across four categories, were collected and prepared for experimentation. This study specifically
focuses on diseased and healthy onion leaves sourced from various agricultural research
centers in Ethiopia. Experimental results demonstrate that the proposed ResNet50 model can
effectively detect and classify the four classes of onion leaf diseases, achieving an impressive
classification accuracy of 98.75%. This performance surpasses that of other classical deep
learning models, including VGG19, DenseNet201, InceptionV3, and standard CNNs.
