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A Fruit Tree Disease Diagnosis Model Based on Stacking Ensemble Learning

Author

Listed:
  • Honglei Li
  • Ying Jin
  • Jiliang Zhong
  • Ruixue Zhao
  • Sampath Pradeep

Abstract

Fruit tree diseases have a great influence on agricultural production. Artificial intelligence technologies have been used to help fruit growers identify fruit tree diseases in a timely and accurate way. In this study, a dataset of 10,000 images of pear black spot, pear rust, apple mosaic, and apple rust was used to develop the diagnosis model. To achieve better performance, we developed three kinds of ensemble learning classifiers and two kinds of deep learning classifiers, validated and tested these five models, and found that the stacking ensemble learning classifier outperformed the other classifiers with the accuracy of 98.05% on the validation dataset and 97.34% on the test dataset, which hinted that, with the small- and middle-sized dataset, stacking ensemble learning classifiers may be used as cost-effective alternatives to deep learning models under performance and cost constraints.

Suggested Citation

  • Honglei Li & Ying Jin & Jiliang Zhong & Ruixue Zhao & Sampath Pradeep, 2021. "A Fruit Tree Disease Diagnosis Model Based on Stacking Ensemble Learning," Complexity, Hindawi, vol. 2021, pages 1-12, September.
  • Handle: RePEc:hin:complx:6868592
    DOI: 10.1155/2021/6868592
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