An Enhanced Convolutional Neural Network for Accurate Classification of Grape Leaf Diseases

Journal Title: Information Dynamics and Applications - Year 2023, Vol 2, Issue 1

Abstract

Grape leaf diseases can significantly reduce grape yield and quality, making accurate and efficient identification of these diseases crucial for improving grape production. This study proposes a novel classification method for grape leaf disease images using an improved convolutional neural network. The Xception network serves as the base model, with the original ReLU activation function replaced by Mish to improve classification accuracy. An improved channel attention mechanism is integrated into the network, enabling it to automatically learn important information from each channel, and the fully connected layer is redesigned for optimal classification performance. Experimental results demonstrate that the proposed model (MS-Xception) achieves high accuracy with fewer parameters, achieving a recognition accuracy of 98.61% for grape leaf disease images. Compared to other state-of-the-art models such as ResNet50 and Swim-Transformer, the proposed model shows superior classification performance, providing an efficient method for intelligent diagnosis of grape leaf diseases. The proposed method significantly improves the accuracy and efficiency of grape leaf disease diagnosis and has potential for practical application in the field of grape production.

Authors and Affiliations

Yinglai Huang, Ning Li, Zhenbo Liu

Keywords

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  • EP ID EP732628
  • DOI https://doi.org/10.56578/ida020102
  • Views 80
  • Downloads 0

How To Cite

Yinglai Huang, Ning Li, Zhenbo Liu (2023). An Enhanced Convolutional Neural Network for Accurate Classification of Grape Leaf Diseases. Information Dynamics and Applications, 2(1), -. https://europub.co.uk/articles/-A-732628