Online diagnosis platform for tomato seedling diseases in greenhouse production
Abstract
Keywords: pest and disease detection, YOLO, diagnosis platform, k-means clustering, facility production base
DOI: 10.25165/j.ijabe.20241701.8433
Citation: Jin X, Zhu X W, Ji J T, Li M Y, Xie X L, Zhao B. Online diagnosis platform for tomato seedling diseases in greenhouse production. Int J Agric & Biol Eng, 2024; 17(1): 80-89.
Keywords
Full Text:
PDFReferences
Jia Z H, Zhang Y Y, Wang H T, Liang D. Identification method of tomato disease period based on Res2Net and bilinear attention mechanism. Transactions of the CSAM, 2022; 53(7): 259–266.
Osdaghi E, Jones J B, Sharma A, Goss E M, Abrahamian P, Newberry EA, et al. A centenary for bacterial spot of tomato and pepper. Molecular Plant Pathology, 2021; 22(12): 1500–1519.
Hu Z, Zhang Y. Effect of dimensionality reduction and noise reduction on hyperspectral recognition during incubation period of tomato early blight. Spectroscopy and Spectral Analysis, 2023; 43(3): 744–752.
Wu K T, Gevens A J, Silva E M. Exploring grower strategies and needs for enhancing organic disease management of tomato late blight. Renewable Agriculture and Food Systems, 2022; 37(5): 382–398.
Zhao T T, Pei T, Jiang J B, Yang H H, Zhang H, Li J F, et al. Understanding the mechanisms of resistance to tomato leaf mold: A review. Horticultural Plant Journal, 2022; 8: 667–675.
Hu W Y, Hong W, Wang H K, Liu M Z, Liu S. A study on tomato disease and pest detection method. Applied Sciences, 2023; 13(18): 10063.
Mansour A, Al-Banna L, Salem N, Alsmairat N. Disease management of organic tomato under greenhouse conditions in the Jordan Valley. Crop Protection, 2014; 60: 48–55.
Ramírez C C, Gundel P E, Karley A J, Leybourne D J. To tolerate drought or resist aphids? A new challenge to plant science is on the horizon. Journal of Experimental Botany, 2023; 74(6): 1745–1750.
Reddy G, Tangtrakulwanich K. Module of integrated insect pest management on tomato with growers’ participation. Journal of Agricultural Science, 2014; 6(5): 1619–9752.
de Souza Marinke L, de Resende J T V, Hata F T, Dias D M, de Oliveira L V B, Ventura M U. Selection of tomato genotypes with high resistance to Tetranychus evansi mediated by glandular trichomes. Phytoparasitica, 2022; 50(3): 629–643.
Saleem M, ul Hasan M, Sagheer M, Atiq M. Determination of insecticide resistance in Bemisia tabaci (Hemiptera: Aleyrodidae) populations from Punjab, Pakistan. International Journal of Tropical Insect Science, 2021; 41: 1799–1808.
Mateos Fernández R, Petek M, Gerasymenko I, Juteršek M, Baebler Š, Kallam K, et al. Insect pest management in the age of synthetic biology. Plant Biotechnology Journal, 2022; 20(1): 25–36.
Arunnehru J, Vidhyasagar B S, Anwar Basha H. Plant leaf diseases recognition using convolutional neural network and transfer learning. In: International Conference on Communication, Computing and Electronics Systems: Springer, 2020; pp.221–229. doi:10.1007/978-981-15-2612-1_21.
Singh R, Ao N T, Kangjam V, Rajesha G, Banik S. Plant growth promoting microbial consortia against late blight disease of tomato under natural epiphytotic conditions. Indian Phytopathology, 2022; 75(2): 527–539.
Li Y F, Wang H X, Dang L M, Sadeghi-Niaraki A, Moon H. Crop pest recognition in natural scenes using convolutional neural networks. Computers and Electronics in Agriculture, 2020; 169: 105174.
Liu J, Wang X W. Plant diseases and pests detection based on deep learning: a review. Plant Methods, 2021; 17: 22.
Kamilaris A, Prenafeta-Boldú F X. Deep learning in agriculture: A survey. Computers and Electronics in Agriculture, 2018; 147: 70–90.
Lu J Z, Tan L J, Jiang H Y. Review on convolutional neural network (CNN) applied to plant leaf disease classification. Agriculture, 2021; 11(8): 707.
Deng F M, Mao W, Zeng Z Q, Zeng H, Wei B Q. Multiple diseases and pests detection based on federated learning and improved faster R-CNN. IEEE Transactions on Instrumentation and Measurement, 2022; 71: 1–11.
Jiao L, Dong S F, Zhang S Y, Xie C J, Wang H Q. AF-RCNN: An anchor-free convolutional neural network for multi-categories agricultural pest detection. Computers and Electronics in Agriculture, 2020; 174: 105522.
Zhang Y, Song C L, Zhang D W. Deep learning-based object detection improvement for tomato disease. IEEE Access, 2020; 8: 56607–56614.
Xie X Y, Ma Y, Liu B, He J R, Li S Q, Wang H Y. A deep-learning-based real-time detector for grape leaf diseases using improved convolutional neural networks. Frontiers in Plant Science, 2020; 11: 751.
Wang J, Yu L Y, Yang J, Dong H. DBA_SSD: A novel end-to-end object detection algorithm applied to plant disease detection. Information, 2021; 12(11): 474.
Sun H N, Xu H W, Liu B, He D J, He J R, Zhang H X, et al. MEAN-SSD: A novel real-time detector for apple leaf diseases using improved light-weight convolutional neural networks. Computers and Electronics in Agriculture, 2021; 189: 106379.
Liu J, Wang X W. Tomato diseases and pests detection based on improved Yolo V3 convolutional neural network. Frontiers in Plant Science, 2020; 11: 898.
Wang X W, Liu J, Zhu X N. Early real-time detection algorithm of tomato diseases and pests in the natural environment. Plant Methods, 2021; 17: 43.
Liu J, Wang X W, Miao W Q, Liu G X. Tomato pests recognition algorithm based on improved YOLOv4. Frontiers in Plant Science, 2022; 13: 814681.
Qi J T, Liu X N, Liu K, Xu F R, Guo H, Tian X L, et al. An improved YOLOv5 model based on visual attention mechanism: Application to recognition of tomato virus disease. Computers and Electronics in Agriculture, 2022; 194: 106780.
Chen Z Y, Wu R H, Lin Y Y, Li C Y, Chen S Y, Yuan Z N, et al. Plant disease recognition model based on improved YOLOv5. Agronomy, 2022; 12(2): 365.
Hughes D P, Salathé M. An open access repository of images on plant health to enable the development of mobile disease diagnostics. arXiv, 2015; In press. doi: 10.48550/arXiv.1511.08060.
Shi Z J, Shi M Y, Lin W G. The implementation of crawling news page based on incremental web crawler. In: 2016 4th Intl Conf on Applied Computing and Information Technology/3rd Intl Conf on Computational Science/Intelligence and Applied Informatics/1st Intl Conf on Big Data, Cloud Computing, Data Science & Engineering (ACIT-CSII-BCD): IEEE, 2016; pp.348–351. doi: 10.1109/ACIT-CSII-BCD.2016.073.
Zhu J-Y, Park T, Isola P, Efros A A. Unpaired image-to-image translation using cycle-consistent adversarial networks. In: Proceedings of the IEEE international conference on computer vision: 2017. 2223–2232. doi: 10.1109/ICCV.2017.244.
Bochkovskiy A, Wang C-Y, Liao H-Y M. Yolov4: Optimal speed and accuracy of object detection. arXiv, 2020; In press. doi: 10.48550/arXiv.2004.10934.
Zhang H Y, Cisse M, Dauphin Y N, Lopez-Paz D. mixup: Beyond empirical risk minimization. arXiv, 2017; In press. doi: 10.48550/arXiv.1710.09412.
Redmon J, Divvala S, Girshick R, Farhadi A. You only look once: Unified, real-time object detection. In: Proceedings of the IEEE conference on computer vision and pattern recognition: 2016. 779–788. doi: 10.1109/CVPR.2016.91.
Hao S Y, Lee D-H, Zhao D. Sequence to sequence learning with attention mechanism for short-term passenger flow prediction in large-scale metro system. Transportation Research Part C:Emerging Technologies, 2019; 107: 287–300.
Woo S, Park J, Lee J-Y, Kweon I S. Cbam: Convolutional block attention module. In: Proceedings of the European conference on computer vision (ECCV), Munich, Germany: Computer Vision Foundation, 2018; pp.3–19. doi: 10.1007/978-3-030-01234-2_1.
Tan M X, Pang R M, Le Q V. Efficientdet: Scalable and efficient object detection. In: 2020 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), Seattle, WA, USA: IEEE, 2020; pp.10778–10787. doi: 10.1109/CVPR42600.2020.01079
Han K, Wang Y H, Tian Q, Guo J Y, Xu C J, Xu C. Ghostnet: More features from cheap operations. In: 2020 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), Seattle, WA, USA: IEEE, 2020; 1580–1589. doi: 10.1109/CVPR42600.2020.00165.
Liu H F, Chen J X, Dy J, Fu Y. Transforming complex problems into k-means solutions. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2023; 45: 9149–9168.
Zhang Y J, Ma B X, Hu Y T, Li C, Li Y J. Accurate cotton diseases and pests detection in complex background based on an improved YOLOX model. Computers and Electronics in Agriculture, 2022; 203: 107484.
Copyright (c) 2024 International Journal of Agricultural and Biological Engineering
This work is licensed under a Creative Commons Attribution 4.0 International License.