Key points are not available for this paper at this time.
Artificial intelligence (AI) and deep learning (DL) for plant disease detection are emerging research areas. DL methods generally require a large amount of annotated data for training, which is often costly, time-consuming, and infeasible. This article addresses the data scarcity problem and proposes a few-shot learning (FSL) method for barley plant disease detection. To prepare a dataset, we captured images from outdoor test-bed trials (at two different growth stages of plants across multiple paddocks) under various weather conditions, such as sunny and cloudy. The images are divided into patches and manually labelled into five classes: no-disease, net form net blotch (NFNB) (which is classified into two stages: early and severe), spot form net blotch (SFNB), and scald. We name this as the Barley dataset. We also used the publicly available cassava dataset, which has five classes. The datasets are then applied to the proposed FSL pipeline, which only uses as few as five images for each class in training. We use the Swin transformer as the network backbone. The method with the Swin-B variant as the feature extractor achieved a detection accuracy of 91.80% and 97.93% on the barley disease and cassava datasets, respectively. The result indicates that our FSL model can efficiently perform and classify barley disease with small training data. • A few-shot learning method is developed to address data scarcity problems. • Results on the collected plant disease data warrant the model’s potential. • Cutting-edge transformers, e.g. Swin-B, perform well given only five training images • Meta-training and transfer learning significantly improve performance. • Apparent disease symptoms can be detected and used in various applications.
Building similarity graph...
Analyzing shared references across papers
Loading...
Masoud Rezaei
Dean Diepeveen
Hamid Laga
Computers and Electronics in Agriculture
Murdoch University
Department of Primary Industries and Regional Development
Building similarity graph...
Analyzing shared references across papers
Loading...
Rezaei et al. (Thu,) studied this question.
www.synapsesocial.com/papers/69df016b380a6f327106b074 — DOI: https://doi.org/10.1016/j.compag.2024.109751