Abstract
Plant diseases cause great damage in agriculture, resulting in significant yield losses. The recent expansion of deep learning methods has found its application in plant disease detection, offering a robust tool with highly accurate results. The current limitations and shortcomings of existing plant disease detection models are presented and discussed in this paper. Furthermore, a new dataset containing 79,265 images was introduced with the aim to become the largest dataset containing leaf images. Images were taken in various weather conditions, at different angles, and daylight hours with an inconsistent background mimicking practical situations. Two approaches were used to augment the number of images in the dataset: traditional augmentation methods and state-of-the-art style generative adversarial networks. Several experiments were conducted to test the impact of training in a controlled environment and usage in real-life situations to accurately identify plant diseases in a complex background and in various conditions including the detection of multiple diseases in a single leaf. Finally, a novel two-stage architecture of a neural network was proposed for plant disease classification focused on a real environment. The trained model achieved an accuracy of 93.67%.
Highlights
Plant diseases have always been a significant concern in agriculture since they cause a reduction in crop quality and production
A recent paper [14] on plant disease identification showed that even if the dataset had a fairly low number of samples, if it is representative in qualitative terms, it could be used for the training of a deep neural network
Plant diseases have been a significant concern in agriculture for years
Summary
Plant diseases have always been a significant concern in agriculture since they cause a reduction in crop quality and production. The effects of plant diseases range from minor symptoms to the serious damage of entire areas of planted crops, which causes major financial costs and impacts heavily on the agricultural economy [1], especially in developing countries that depend on a single crop or a few crops. In order to prevent major losses, various methods have been developed to diagnose disease. Multiple Diseases in the Same Sample − * +. Legend: + Resolved – Unresolved * Partially Resolved.
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