A lightweight deep convolutional neural network development for soybean leaf disease recognition
Yakun Zhang, Ruofei Bao, Mengxin Guan, Zixuan Wang, Libo Wang, Xiahua Cui, Xiaoli Niu, Yan Wang, Shaukat Ali, Yafei Wang

TL;DR
A new lightweight deep learning model is developed to accurately identify soybean leaf diseases using multiscale feature extraction and dense connections.
Contribution
A novel lightweight CNN architecture (MFEF-DCNet) is proposed for soybean leaf disease recognition with improved accuracy and efficiency.
Findings
MFEF-DCNet achieved 94.70% accuracy in identifying eight soybean leaf disease and deficiency classes.
The model outperformed popular CNNs like VGG16, ResNet50, and MobileNetV3 in classification accuracy and convergence speed.
MFEF-DCNet showed 90.24% accuracy in local data, indicating strong practical applicability for disease recognition.
Abstract
Soybean is one of the world’s major oil-bearing crops and occupies an important role in the daily diet of human beings. However, the frequent occurrence of soybean leaf diseases caused serious threats to its yield and quality during soybean cultivation. Rapid identification of soybean leaf diseases could provide a better solution for efficient control and subsequent precision application. In this study, a lightweight deep convolutional neural network (CNN) based on multiscale feature extraction fusion (MFEF) and combined with a dense connectivity (DC) network (MFEF-DCNet) was proposed for soybean leaf disease identification. In MFEF-DCNet, a multiscale feature extraction fusion (MFEF) module for soybean leaves was constructed by utilizing a convolutional attention module and depth-separable convolution to improve the model feature extraction capability. Multiscale features are fused by…
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Taxonomy
TopicsSmart Agriculture and AI · Plant Disease Management Techniques · Plant Pathogens and Fungal Diseases
