4.7 Article

Tomato Leaf Disease Diagnosis Based on Improved Convolution Neural Network by Attention Module

Journal

AGRICULTURE-BASEL
Volume 11, Issue 7, Pages -

Publisher

MDPI
DOI: 10.3390/agriculture11070651

Keywords

tomato leaf disease; deep learning; convolutional neural network (cnn); attention mechanism; classification

Categories

Funding

  1. Graduate Research and Innovation Projects of Jiangsu Province [KYCX20_3034]
  2. Primary Research & Developement Plan of Changzhou City (Modern Agriculture)
  3. Primary Research & Developement Plan of Jiangsu Province-Modern Agriculture [BE2020383]
  4. Priority Academic Program Development of Jiangsu Higher Education Institutions [PAPD-2018-87]

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Crop disease diagnosis is crucial for crop yield and agricultural production. This study proposed a deep convolutional neural network with an attention mechanism for accurate diagnosis of tomato leaf diseases. Experimental results on both tomato leaf diseases dataset and grape leaf diseases dataset demonstrated the model's high performance in extracting complex disease features.
Crop disease diagnosis is of great significance to crop yield and agricultural production. Deep learning methods have become the main research direction to solve the diagnosis of crop diseases. This paper proposed a deep convolutional neural network that integrates an attention mechanism, which can better adapt to the diagnosis of a variety of tomato leaf diseases. The network structure mainly includes residual blocks and attention extraction modules. The model can accurately extract complex features of various diseases. Extensive comparative experiment results show that the proposed model achieves the average identification accuracy of 96.81% on the tomato leaf diseases dataset. It proves that the model has significant advantages in terms of network complexity and real-time performance compared with other models. Moreover, through the model comparison experiment on the grape leaf diseases public dataset, the proposed model also achieves better results, and the average identification accuracy of 99.24%. It is certified that add the attention module can more accurately extract the complex features of a variety of diseases and has fewer parameters. The proposed model provides a high-performance solution for crop diagnosis under the real agricultural environment.

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