A multi-scale feature fusion neural network for multi-class disease classification on the maize leaf images

Social sciences (General) H1-99 Q1-390 Science (General) 0202 electrical engineering, electronic engineering, information engineering 02 engineering and technology Multi-scale Multi-class Maize leaf images Residual network Research Article
DOI: 10.1016/j.heliyon.2024.e28264 Publication Date: 2024-03-21T00:35:05Z
ABSTRACT
Maize is a globally important cereal crop, however, maize leaf disease is one of the most common and devastating diseases that afflict it. Artificial intelligence methods face challenges in identifying and classifying maize leaf diseases due to variations in image quality, similarity among diseases, disease severity, limited dataset availability, and limited interpretability. To address these challenges, we propose a residual-based multi-scale network (MResNet) for classifying multi-type maize leaf diseases from maize images. MResNet consists of two residual subnets with different scales, enabling the model to detect diseases in maize leaf images at different scales. We further utilize a hybrid feature weight optimization method to optimize and fuse the feature mapping weights of two subnets. We validate MResNet on a maize leaf diseases dataset. MResNet achieves 97.45% accuracy. The performance of MResNet surpasses other state-of-the-art methods. Various experiments and two additional datasets confirm the generalization performance of our model. Furthermore, thermodynamic diagram analysis increases the interpretability of the model. This study provides technical support for the disease classification of agricultural plants.
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