中文    English

Journal of Library and Information Science in Agriculture ›› 2023, Vol. 35 ›› Issue (2): 87-94.doi: 10.13998/j.cnki.issn1002-1248.21-0188

Previous Articles     Next Articles

Recognition and Classification of Deep Learning in Soybean Leaf Image Data Management

LU Lina1,2, YU Xiao1,2,*   

  1. 1. Business School, Shandong University of Technology, Zibo 255000;
    2. School of Computer Science and Technology, Shandong University of Technology, Zibo 255049
  • Received:2021-03-15 Published:2023-04-28

Abstract: [Purpose/Significance] We used to process soybean leaf data by looking at them and process data manually, but this method is very inefficient. In order to improve the classification accuracy and efficiency of soybean leaf images, further for storage and management of these images, we used the deep learning technique to make an in-depth study of text data and image data of soybean leaves for the image recognition and classification. The application of deep learning in agricultural data management mainly focuses on the image recognition and classification of plants and plant phenotypes in large-scale data, detection and classification of agricultural diseases and pests, detection and classification of crops and weeds, and prediction of crop yield. Through case analysis, our sample data demonstrated the application process of deep learning technology. [Method/Process] This paper systematically described the whole process of classification and recognition of agricultural data by using the deep learning technique. Through recognition and disease monitoring of plant leaves, the leaf morphology of soybean plants in the soybean experimental field of Heilongjiang Academy of Agricultural Sciences was taken as an example. We analyzed the image features of soybean leaf morphology, and carried out the classification and recognition research of soybean leaf morphology based on deep learning. Deep learning techniques have replaced shallow classifiers that use manual feature training and can identify soybean leaves with a high degree of accuracy as long as sufficient data are available for training. We adopted DenseNet model, which is suitable for common network model. The advantages of this model are that it has the best performance and the least storage requirements. First,we selected support vector machine (SVM) and random forest (RF) in traditional machine learning methods to identify soybean leaf morphology. Second, AlexNet and ResNet were selected to identify soybean leaf morphology. Finally, the recognition accuracy of different methods were compared with the DenseNet network adopted in this paper. [Results/Conclusions] Through the training of DenseNet model, the recognition accuracy of 94% was achieved, which successfully solved the problems of long time, low efficiency and low recognition accuracy of traditional methods in processing image classification of soybean leaves, and could meet the actual needs of agricultural image data classification. Future research efforts will strive to collect a wide range of large and diverse data sets to facilitate soybean leaf recognition, and focus on developing reliable background removal techniques and incorporating other forms of data to improve the accuracy and reliability of soybean leaf recognition systems.

Key words: deep learning, agricultural science data, data classification, image recognition

CLC Number: 

  • G250.7
[1] 姜恩波, 李娜. 中国开放政府农业数据分析与评价[J]. 农业图书情报学报, 2020, 32(10): 4-15.
JIANG E B, LI N.Analysis and evaluation of China's open govern-ment agricultural data[J]. Journal of agricultural library and infor-mation, 2020, 32(10): 4-15.
[2] 翁杨, 曾睿, 吴陈铭, 等. 基于深度学习的农业植物表型研究综述[J]. 中国科学: 生命科学, 2019, 49(6): 698-716.
WENG Y, ZENG R, WU C M, et al.A review of research on agricultural plant phenotypes based on deep learning[J]. Science China: Life sciences, 2019, 49(6): 698-716.
[3] 岑海燕, 朱月明, 孙大伟, 等. 深度学习在植物表型研究中的应用现状与展望[J]. 农业工程学报, 2020, 36(9): 1-16.
CEN H Y, ZHU Y M, SUN D W, et al.Application status and prospects of deep learning in plant phenotype research[J]. Transactions of the Chinese society of agricultural engineering, 2020, 36(9): 1-16.
[4] 袁培森, 黎薇, 任守纲, 等. 基于卷积神经网络的菊花花型和品种识别[J]. 农业工程学报, 2018, 34(5): 152-158.
YUAN P S, LI W, REN S G, et al.Chrysanthemum flower type and variety recognition based on convolutional neural network[J]. Transactions of the Chinese society of agricultural engineering, 2018, 34(5): 152-158.
[5] WU J T, YANG G, YANG H, et al.Extracting apple tree crown in-formation from remote imagery using deep learning[J]. Computers and electronics in agriculture, 2020, 174: 1-14.
[6] RAUF H T, SALEEM B A, LALI M, et al.A citrus fruits and leaves dataset for detection and classification of citrus diseases through Q 5 machine learning[J]. Data in brief, 2019, 26: 1-7.
[7] MYR J, KESKI-SAARI S, KIVINEN S, et al.Tree species classification from airborne hyperspectral and LiDAR data using 3D convolutional neural networks[J]. Remote sensing of environment, 2021, 256: 112322.
[8] DYRMANN M, KARSTOFT H, MIDTIBY H S.Plant species classi-fication using deep convolutional neural network[J]. Biosystems en-gineering, 2016, 151: 72-80.
[9] 吕盛坪, 李灯辉, 冼荣亨. 深度学习在我国农业中的应用研究现状[J]. 计算机工程与应用, 2019, 55(20): 24-33, 51.
LV S P, LI D H, XIAN R H.The application research status of deep learning in agriculture in my country[J]. Computer engineering and applications, 2019, 55(20): 24-33, 51.
[10] Manavalan R.Automatic identification of diseases in grains crops through computational approaches: A review[J]. Computers and electronics in agriculture, 2020, 178: 1-24.
[11] 金瑛, 叶飒, 李洪磊. 基于ResNet-50深度卷积网络的果树病害智能诊断模型研究[J]. 农业图书情报学报, 2021, 33(4): 58-67.
JIN Y, YE S, LI H L.The intelligent diagnosis model of fruit tree disease based on resNet-50[J]. Journal of library and information science in agriculture, 2021, 33(4): 58-67.
[1] WANG Sili, ZHANG Ling, YANG Heng, LIU Wei. Review of Deep Learning for Language Modeling [J]. Journal of Library and Information Science in Agriculture, 2023, 35(8): 4-18.
[2] LIU Nanzhu, CUI Yunpeng, WANG Mo. Construction and Application of Semantic Retrieval Model for Ancient Agricultural Literature [J]. Journal of Library and Information Science in Agriculture, 2023, 35(7): 52-62.
[3] HOU Xiangying, CUI Yunpeng, LIU Juan. Applications and Prospect Analysis of Deep Learning in Plant Genomics and Crop Breeding [J]. Journal of Library and Information Science in Agriculture, 2022, 34(8): 4-18.
[4] SHI Yunlai, CUI Yunpeng, DU Zhigang. A Classification Method of Agricultural News Text Based on BERT and Deep Active Learning [J]. Journal of Library and Information Science in Agriculture, 2022, 34(8): 19-29.
[5] MAO Jin, CHEN Ziyang. A Deep Learning Based Approach to Structural Function Recognition of Scientific Literature Abstracts [J]. Journal of Library and Information Science in Agriculture, 2022, 34(3): 15-27.
[6] JIN Ying, YE Sa, LI Honglei. The Intelligent Diagnosis Model of Fruit Tree Disease Based on ResNet-50 [J]. Journal of Library and Information Science in Agriculture, 2021, 33(4): 58-67.
[7] LYU Lucheng, HAN Tao. Artificial Intelligence Empowers Library and Information Service ——Review of Forums about Information Technology for Library 2019 [J]. Journal of Library and Information Science in Agriculture, 2020, 32(5): 13-18.
[8] WANG Xuejing. Research on Intelligent Service Mode of Digital Library Based on Deep Learning Technology [J]. , 2018, 30(9): 150-153.
[9] WEI Junjie, ZHANG Siyao, YE Qing. Investigation on the Function of CIS in the Reader Service of University Library ——A Case Study of Library Service in Nanjing Tech University [J]. , 2018, 30(3): 182-186.
Viewed
Full text


Abstract

Cited

  Shared   
  Discussed   
No Suggested Reading articles found!