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Enhancing the dataset of CycleGAN-M and YOLOv8s-KEF for identifying apple leaf diseases

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  • Lijun Gao
  • Hongxin Wu
  • Yunsheng Sheng
  • Kunlin Liu
  • Huanhuan Wu
  • Xuedong Zhang

Abstract

Accurate diagnosis of apple diseases is vital for tree health, yield improvement, and minimizing economic losses. This study introduces a deep learning-based model to tackle issues like limited datasets, small sample sizes, and low recognition accuracy in detecting apple leaf diseases. The approach begins with enhancing the CycleGAN-M network using a multi-scale attention mechanism to generate synthetic samples, improving model robustness and generalization by mitigating imbalances in disease-type representation. Next, an improved YOLOv8s-KEF model is introduced to overcome limitations in feature extraction, particularly for small lesions and complex textures in natural environments. The model’s backbone replaces the standard C2f structure with C2f-KanConv, significantly enhancing disease recognition capabilities. Additionally, we optimize the detection head with Efficient Multi-Scale Convolution (EMS-Conv), improving the model’s ability to detect small targets while maintaining robustness and generalization across diverse disease types and conditions. Incorporating Focal-EIoU further reduces missed and false detections, enhancing overall accuracy. The experiment results demonstrate that the YOLOv8s-KEF model achieves 95.0% in accuracy, 93.1% in recall, 95.8% in precision, and an F1-score of 94.5%. Compared to the original YOLOv8s model, the proposed model improves accuracy by 7.2%, precision by 6.5%, and F1-score by 5.0%, with only a modest 6MB increase in model size. Furthermore, compared to Faster RCNN, ResNet50, SSD, YOLOv3-tiny, YOLOv6, YOLOv9s, and YOLOv10m, our model demonstrates substantial improvements, with up to 30.2% higher precision and 18.0% greater accuracy. This study used CycleGAN-M and YOLOv8s-KEF methods to enhance the detection capability of apple leaf diseases.

Suggested Citation

  • Lijun Gao & Hongxin Wu & Yunsheng Sheng & Kunlin Liu & Huanhuan Wu & Xuedong Zhang, 2025. "Enhancing the dataset of CycleGAN-M and YOLOv8s-KEF for identifying apple leaf diseases," PLOS ONE, Public Library of Science, vol. 20(5), pages 1-33, May.
  • Handle: RePEc:plo:pone00:0321770
    DOI: 10.1371/journal.pone.0321770
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