Disease Detection of Lily Based on Convolutional Capsule Network

被引:0
|
作者
Ding Y. [1 ,2 ]
Zhang J. [1 ]
Li M. [3 ]
机构
[1] School of Electronic and Information Engineering, Lanzhou City University, Lanzhou
[2] College of Computer Science and Engineering, Northwest Normal University, Lanzhou
[3] Key Laboratory of Modern Precision Agriculture System Integration Research, Ministry of Education, China Agricultural University, Beijing
来源
Li, Minzan (limz@cau.edu.cn) | 1600年 / Chinese Society of Agricultural Machinery卷 / 51期
关键词
Convolutional capsule network; Detection; Disease; Lily;
D O I
10.6041/j.issn.1000-1298.2020.12.027
中图分类号
学科分类号
摘要
Lanzhou lily is the only kind of sweet lily in China and it is one of the famous specialties of Gansu Province. However, its yield and quality were decreased significantly in recent years due to gray mold disease, bulb rot disease and other diseases and insect pests. In order to improve the anti-interference ability of Lanzhou lily diseases diagnosis model, the three full connection layers of VGG-16 convolutional network was replaced with capsule network module to construct convolutional capsule network. And the effects of capsule size and route iteration times on training time and model accuracy were analyzed systematically. The result of the experiment showed that the diagnosis accuracy of Lanzhou lily diseases via convolutional capsule network was 99.20% when the capsule size was 8 and the route iteration time was 3. And the capsule size and the number of routing iterations had no significant effect on the accuracy of the model. In addition, the accuracy of VGG-16 model was slightly higher than that of convolutional capsule network when the affine transformation grade was 0.04~0.08. But the anti-interference ability of convolutional capsule network was obviously better than that of VGG-16 model for Gaussian noise, salt-and-pepper noise, speckle noise and other grades of affine transformation. So it was possible to use the convolutional capsule network for dealing with the real-world examples of Lanzhou lily diseases recognition. © 2020, Chinese Society of Agricultural Machinery. All right reserved.
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页码:246 / 251and331
相关论文
共 22 条
  • [1] HUANG Yufang, ZHANG Enhe, ZHANG Xinhui, Et al., Problems associated with continuous cropping of lilium davidii var unicolor, Acta Prataculturae Sinica, 27, 2, pp. 146-155, (2018)
  • [2] HAN Liang, LIANG Qiaolan, ZHOU Qiyu, Resistance of Lanzhou lily to botrytis cinerea induced by protein extract TraT2A from trichoderma atroviride T2 fermentation liquid, Chinese Agricultural Science Bulletin, 32, 20, pp. 44-50, (2016)
  • [3] SUN Jun, TAN Wenjun, MAO Hanping, Et al., Recognition of multiple plant leaf diseases based on improved convolutional neural network, Transactions of the CSAE, 33, 19, pp. 209-215, (2017)
  • [4] CHEN J, CHEN J, ZHANG D, Et al., Using deep transfer learning for image-based plant disease identification, Computers and Electronics in Agriculture, 173, (2020)
  • [5] XUE Yong, WANG Liyang, ZHANG Yu, Et al., Defect detection of apples using GoogLeNet deep transfer learning, Transactions of the Chinese Society for Agricultural Machinery, 51, 7, pp. 30-35, (2020)
  • [6] CRUZ A, AMPATZIDIS Y, PIERRO R, Et al., Detection of grapevine yellows symptoms in Vitis vinifera L. with artificial intelligence, Computers and Electronics in Agriculture, 157, pp. 63-76, (2019)
  • [7] DURMUS H, GUNES E O, KIRCI M., Disease detection on the leaves of the tomato plants by using deep learning, 2017 6th Int. Conf. Agro-Geoinformatics, Agro-Geoinformatics, (2017)
  • [8] HUANG Shuangping, SUN Chao, QI Long, Et al., Rice panicle blast identification method based on deep convolution neural network, Transactions of the CSAE, 33, 20, pp. 169-176, (2017)
  • [9] LIU Yang, FENG Quan, WANG Shuzhi, Plant disease identification method based on lightweight CNN and mobile application, Transactions of the CSAE, 35, 17, pp. 194-204, (2019)
  • [10] FUENTES A, YOON S, KIM S C, Et al., A robust deep-learning-based detector for real-time tomato plant diseases and pests recognition, Sensors, 17, 9, (2017)