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Comparison of Deep-Learning Computer Vision Models for Crop Disease Species Classification and Crop Disease Severity Classification
Book chapter

Comparison of Deep-Learning Computer Vision Models for Crop Disease Species Classification and Crop Disease Severity Classification

Adam P. Stevenson, Hai Wang and Amirmehdi Yazdani
Proceedings of the First International Conference on Advanced Robotics, Control, and Artificial Intelligence, pp.391-400
Lecture Notes in Networks and Systems, 1376, Springer Nature Singapore
2025

Abstract

AlexNet Convolution MLP-Mixer MobileNetv3 severity
The Australian and global agricultural industries are experiencing economic challenges. These challenges to farming are caused by a group of related factors including lack of labour supply, low profit margins, and high operational costs. Of all the factors impacting upon the operation and profitability of farms, it is human labour and chemical pesticides which are most effectual. One potential solution which has been proposed to reduce the impact of said factors is the use of robotic labour on farms. However, the available robotic crop disease classification models are lacking in accuracy and efficiency for this solution to be commercially viable. Therefore, this research aims to further understand what progress needs to be made in order to increase the accuracy and efficiency of crop disease classification models, specifically for disease species classification and disease severity classification purposes. As part of this research, previous literature will be examined to determine the current scope of automatic intelligent crop disease classification capabilities. Subsequently, three State-of-the-Art (SotA) image classification models (AlexNet, MobileNetv3, and MLP-Mixer) will be trained and tested to determine the current standard of performance for crop disease species classification. Subsequently, this research will determine, based upon model performance of currently existing models, which model architecture produces favourable results for crop disease severity classification.

Details

UN Sustainable Development Goals (SDGs)

This output has contributed to the advancement of the following goals:

#3 Good Health and Well-Being
#8 Decent Work and Economic Growth

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