Affordable High Throughput Field Detection of Wheat Stripe Rust Using Deep Learning with Semi-Automated Image Labeling

被引:15
|
作者
Tang, Zhou [1 ]
Wang, Meinan [2 ]
Schirrmann, Michael [3 ]
Li, Xianran [4 ]
Brueggeman, Robert [1 ]
Sankaran, Sindhuja [5 ]
Carter, Arron H.
Pumphrey, Michael O. [1 ]
Hu, Yang [1 ]
Chen, Xianming [2 ,4 ]
Zhang, Zhiwu [1 ]
机构
[1] Washington State Univ, Dept Crop & Soil Sci, Pullman, WA 99164 USA
[2] Washington State Univ, Dept Plant Pathol, Pullman, WA 99164 USA
[3] Leibniz Inst Agr Engn & Bioecon ATB, Max Eyth Allee 100, D-14469 Potsdam, Germany
[4] USDA ARS, Wheat Hlth Genet & Qual Res Unit, Pullman, WA 99164 USA
[5] Washington State Univ, Dept Biol Syst Engn, Pullman, WA 99164 USA
基金
美国食品与农业研究所;
关键词
Plant disease; Machine vision; UAV; Smartphone; Convolutional Neural Network; YELLOW RUST; REFLECTANCE MEASUREMENTS; DISEASE DETECTION; IDENTIFICATION; TRITICI;
D O I
10.1016/j.compag.2023.107709
中图分类号
S [农业科学];
学科分类号
09 ;
摘要
Stripe rust (caused by Puccinia striiformis f. sp. tritici) is one of the most devastating diseases of wheat and causes large-scale epidemics and severe yield loss. Applying fungicides during early epidemic development is crucial to controlling the disease but is often challenged by resource-limited human visual scouting. Deep learning has the potential to process images and videos captured from affordable devices to empower high-throughput pheno-typing for early detection of stripe rust for timely application of fungicides and improve control efficiency. Here, we developed RustNet, a neural network-based image classifier, for efficiently monitoring fields for stripe rust. RustNet was built on a ResNet-18 architecture pre-trained with ImageNet Large-Scale Visual Recognition Challenge (ILSVRC) dataset using transfer learning. RGB images and videos of multiple wheat fields with different wheat types (winter and spring wheat), conditions (irrigated and non-irrigated), and locations were acquired using smartphones or unmanned aerial vehicles near the canopy. A semi-automated image labeling approach was conducted to improve labeling efficiency by combining automated machine labeling and human correction. Cross-validations across multiple categories (sensor platforms, wheat types, and locations) achieved Area Under Curve, the area under the receiver operating characteristic (ROC) curves, from 0.72 to 0.87. Inde-pendent validation on a published dataset from Germany achieved accuracies ranging from 0.79 to 0.86. The visualization of the last convolutional layer of RustNet demonstrated the identification of pixels with stripe rust. RustNet is freely available at https://zzlab.net/RustNet/.
引用
收藏
页数:12
相关论文
共 50 条
  • [31] Detection of Hepatitis C Virus Infection from Patient Sera in Cell Culture Using Semi-Automated Image Analysis
    Schaefer, Noemi
    Rothhaar, Paul
    Heuss, Christian
    Neumann-Haefelin, Christoph
    Thimme, Robert
    Dietz, Julia
    Sarrazin, Christoph
    Schnitzler, Paul
    Merle, Uta
    Perez-del-Pulgar, Sofia
    Laketa, Vibor
    Lohmann, Volker
    VIRUSES-BASEL, 2024, 16 (12):
  • [32] High-throughput, semi-automated quantitative STEM mass measurement of supported metal nanoparticles using a conventional TEM/STEM
    House, Stephen D.
    Chen, Yuxiang
    Jin, Rongchao
    Yang, Judith C.
    ULTRAMICROSCOPY, 2017, 182 : 145 - 155
  • [33] Outdoor Plant Segmentation With Deep Learning for High-Throughput Field Phenotyping on a Diverse Wheat Dataset
    Zenkl, Radek
    Timofte, Radu
    Kirchgessner, Norbert
    Roth, Lukas
    Hund, Andreas
    Van Gool, Luc
    Walter, Achim
    Aasen, Helge
    FRONTIERS IN PLANT SCIENCE, 2022, 12
  • [34] Towards Semi-Automated Game Analytics: An Exploratory Study on Deep Learning-Based Image Classification of Characters in Auto Battler Games
    Thiele, Jeannine
    Thiele, Elisa
    Roschke, Christian
    Heinzig, Manuel
    Ritter, Marc
    HCI IN GAMES, PT I, HCI-GAMES 2024, 2024, 14730 : 295 - 306
  • [35] Automated Visual Inspection of Fabric Image Using Deep Learning Approach for Defect Detection
    Voronin, V.
    Sizyakin, R.
    Zhdanova, M.
    Semenishchev, E.
    Bezuglov, D.
    Zelenskii, A.
    AUTOMATED VISUAL INSPECTION AND MACHINE VISION IV, 2021, 11787
  • [36] A Deep Learning Approach for Automated Fault Detection on Solar Modules Using Image Composites
    Imenes, Anne Gerd
    Noori, Nadia Saad
    Uthaug, Ole Andreas Nesvag
    Kroeni, Robert
    Bianchi, Filippo
    Belbachir, Nabil
    2021 IEEE 48TH PHOTOVOLTAIC SPECIALISTS CONFERENCE (PVSC), 2021, : 1925 - 1929
  • [37] Semi-automated detection of rangeland runoff and erosion control berms using high-resolution topography data
    Li, Li
    INTERNATIONAL SOIL AND WATER CONSERVATION RESEARCH, 2024, 12 (01) : 217 - 226
  • [38] A Low-Cost Method for Phenotyping Wilting and Recovery of Wheat Leaves under Heat Stress Using Semi-Automated Image Analysis
    Rascio, Agata
    De Santis, Giuditta
    Sorrentino, Giuseppe
    PLANTS-BASEL, 2020, 9 (06): : 1 - 14
  • [39] Automated detection and labeling of posterior teeth in dental bitewing X-rays using deep learning
    Alsolamy, Mashail
    Nadeem, Farrukh
    Azhari, Amr Ahmed
    Alsolami, Wafa
    Ahmed, Walaa Magdy
    Computers in Biology and Medicine, 2024, 183
  • [40] AI-Based Crop Disease Detection: Evaluation of Wheat Rust Disease Detection and Classification Using Deep Learning and Machine Learning Approaches
    Akinosun, Temitayo
    Nibouche, Omar
    2023 31ST IRISH CONFERENCE ON ARTIFICIAL INTELLIGENCE AND COGNITIVE SCIENCE, AICS, 2023,