Soybean Leaf Diseases Recognition Based on Generative Adversarial Network and Transfer Learning

IF 0.8 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE International Journal of Computational Intelligence and Applications Pub Date : 2023-11-11 DOI:10.1142/s146902682350030x
Xiao Yu, Cong Chen, Qi Gong, Weihan Li, Lina Lu
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Abstract

Soybean leaf disease labeling data are not easy to obtain, and soybean leaf disease model training often needs a lot of data. Due to the limitations of fixed rules such as rotation and clipping, traditional data enhancement cannot generate images with diversity and variability. In view of the above problems, this study proposed a data enhancement method based on generative adversarial network to expand the original soybean leaf disease dataset. This method was based on cyclic confrontation network, and its discriminator uses dense connection strategy to realize feature reuse, so as to reduce the amount of calculation. In the training process, improved transfer learning is used to automatically fine tune the pre-training model. The accuracy of the optimized method in 9 kinds of soybean leaf disease image recognition is 95.84%, which is 0.98% higher than the traditional fine-tuning method. The experimental results show that this method based on generating confrontation network has significant ability in generating soybean leaf disease image, and can expand the existing dataset. In addition, this method also provides an effective data enhancement solution for the expansion of other crop disease image datasets.
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基于生成对抗网络和迁移学习的大豆叶片病害识别
大豆叶病标记数据不易获得,而大豆叶病模型训练往往需要大量的数据。传统的数据增强由于受到旋转、裁剪等固定规则的限制,无法生成具有多样性和可变性的图像。针对上述问题,本研究提出了一种基于生成对抗网络的数据增强方法,对原始大豆叶病数据集进行扩展。该方法基于循环对抗网络,其鉴别器采用密集连接策略实现特征重用,从而减少了计算量。在训练过程中,采用改进的迁移学习对预训练模型进行自动微调。优化后的方法在9种大豆叶病图像识别中的准确率为95.84%,比传统的微调方法提高0.98%。实验结果表明,基于生成对抗网络的方法在生成大豆叶病图像方面具有显著的能力,并能对现有数据集进行扩展。此外,该方法也为其他作物病害图像数据集的扩展提供了有效的数据增强解决方案。
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来源期刊
CiteScore
2.90
自引率
0.00%
发文量
25
期刊介绍: The International Journal of Computational Intelligence and Applications, IJCIA, is a refereed journal dedicated to the theory and applications of computational intelligence (artificial neural networks, fuzzy systems, evolutionary computation and hybrid systems). The main goal of this journal is to provide the scientific community and industry with a vehicle whereby ideas using two or more conventional and computational intelligence based techniques could be discussed. The IJCIA welcomes original works in areas such as neural networks, fuzzy logic, evolutionary computation, pattern recognition, hybrid intelligent systems, symbolic machine learning, statistical models, image/audio/video compression and retrieval.
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