University of Port Harcourt, Nigeria
University of Port Harcourt, Nigeria
* Corresponding author
University of Port Harcourt, Nigeria
University of Port Harcourt, Nigeria

Article Main Content

Tomato leaf virus diseases present a significant risk to tomato cultivation, leading to substantial financial losses worldwide. Implementing appropriate control measures depends on these diseases being accurately and quickly identified and classified. This article provides an insight into the analysis of the various technologies used to classify tomato leaf virus diseases as well as some similar plant leaf virus disease. The review encompasses both traditional and modern techniques, including image processing, machine learning, and deep learning methods. It explores the use of different imaging techniques, such as visible light RGB, infrared, and hyperspectral imaging, for capturing leaf disease symptoms. Additionally, it emphasizes the growing significance of deep learning models, such as convolutional neural networks, in identifying diseases with extreme precision.  Overall, this study offers insightful information on the technological developments for the categorization of tomato leaf viral illnesses, promoting the creation of efficient disease management techniques.

References

  1. Eli-Chukwu NC. Applications of Artificial Intelligence in Agriculture: A Review. Engineering, Technology & Applied Science Research. 2019 Aug 10;9(4):4377–83.
     Google Scholar
  2. Affonso C, Rossi ALD, Vieira FHA, de Carvalho ACP de LF. Deep learning for biological image classification. Expert Systems with Applications. 2017 Nov; 85:114–22.
     Google Scholar
  3. Ongena M, Jacques P. Bacillus lipopeptides: versatile weapons for plant disease biocontrol. Trends in Microbiology. 2008 Mar;16(3):115–25.
     Google Scholar
  4. Shannon MA, Bohn PW, Elimelech M, Georgiadis JG, Mariñas BJ, Mayes AM. Science and technology for water purification in the coming decades. Nature. 2008 Mar;452(7185):301–10. Available from: https://www.nature.com/articles/nature06599.
     Google Scholar
  5. Mitchell AE, Hong YJ, Koh E, Barrett DM, Bryant DE, Denison RF, et al. Ten-year comparison of the influence of organic and conventional crop management practices on the content of flavonoids in tomatoes. Journal of Agricultural and Food Chemistry. 2007 Jul;55(15):6154–9.
     Google Scholar
  6. Liu J, Wang X. Early recognition of tomato gray leaf spot disease based on MobileNetv2-YOLOv3 model. Plant Methods. 2020 Jun 8;16(1).
     Google Scholar
  7. Khanna A, Kaur S. Evolution of Internet of Things (IoT) and its significant impact in the field of Precision Agriculture. Computers and Electronics in Agriculture. 2019 Feb;157:218–31.
     Google Scholar
  8. Fuentes A, Yoon S, Kim S, Park D. A Robust deep-learning-based detector for real-time tomato plant diseases and pests recognition. Sensors. 2017 Sep 4;17(9):2022.
     Google Scholar
  9. Singhal A, Sinha P, Pant R. Use of deep learning in modern recommendation system: a summary of recent works. International Journal of Computer Applications. 2017 Dec 15;180(7):17–22.
     Google Scholar
  10. Jianchang M, Jain AK. Artificial neural networks for feature extraction and multivariate data projection. 2nd ed. Vol. 6. IEEE transactions on neural networks; 1995.
     Google Scholar
  11. Ashqar BAM, Abu-Naser SS. Identifying images of invasive hydrangea using pre-trained deep convolutional neural networks. International Journal of Control and Automation. 2019 Apr 30;12(4):15–28.
     Google Scholar
  12. Sakr GE, Mokbel M, Darwich A, Khneisser MN, Hadi A. Comparing deep learning and support vector machines for autonomous waste sorting. 2016 IEEE International Multidisciplinary Conference on Engineering Technology (IMCET). 2016.
     Google Scholar
  13. Sanida MV, Sanida T, Sideris A, Dasygenis M. An Efficient hybrid cnn classification model for tomato crop disease. Technologies. 2023 Jan 4;11(1):10.
     Google Scholar
  14. Wu SG, Bao FS, Xu EY, Wang YX, Chang YF, Xiang QL. A leaf recognition algorithm for plant classification using probabilistic neural network. 2007 IEEE International Symposium on Signal Processing and Information Technology. 2007 Dec;
     Google Scholar
  15. Wang XF, Huang DS, Du JX, Xu H, Heutte L. Classification of plant leaf images with complicated background. Applied Mathematics and Computation. 2008 Nov;205(2):916–26.
     Google Scholar
  16. Rumpf T, Mahlein AK, Steiner U, Oerke EC, Dehne HW, Plümer L. Early detection and classification of plant diseases with support vector machines based on hyperspectral reflectance. Computers and Electronics in Agriculture. 2010 Oct 1;74(1):91–9.
     Google Scholar
  17. Al Hiary H, Bani Ahmad S, Reyalat M, Braik M, ALRahamneh Z. Fast and accurate detection and classification of plant diseases. International Journal of Computer Applications. 2011 Mar 31;17(1):31–8.
     Google Scholar
  18. Al Bashish D, Braik M, Bani-Ahmad S. Detection and classification of leaf diseases using k-means-based segmentation and neural-networks-based classification. Information Technology Journal. 2011 Feb 1;10(2):267–75.
     Google Scholar
  19. Mokhtar U, Ali MAS, Hassenian AE, Hefny H. Tomato leaves diseases detection approach based on Support Vector Machines. 2015 11th International Computer Engineering Conference (ICENCO). 2015, pp. 246-250.
     Google Scholar
  20. Zaki SZM, Asyraf Zulkifley M, Mohd Stofa M, Kamari NAM, Ayuni Mohamed N. Classification of tomato leaf diseases using MobileNet v2. IAES International Journal of Artificial Intelligence (IJ-AI). 2020 Jun 1;9(2):290.
     Google Scholar
  21. Mounes Astani, Hasheminejad M, Mahsa Vaghefi. A diverse ensemble classifier for tomato disease recognition. Computers and Electronics in Agriculture. 2022 Jul 1;198:107054–4.
     Google Scholar
  22. Sambasivam G, Opiyo GD. A predictive machine learning application in agriculture: Cassava disease detection and classification with imbalanced dataset using convolutional neural networks. Egyptian Informatics Journal. 2020;22(1):27-34.
     Google Scholar
  23. Gerdan D, Koç C, Vatandaş M. Diagnosis of tomato plant diseases using pre-trained architectures and a proposed convolutional neural network model. Tarım Bilimleri Dergisi. 2022; 29(2):618-629.
     Google Scholar
  24. Ifmalinda, Andasuryani, Rasinta I. Classification of tomato (Lycoersicon Esculentum Miil) ripeness levels based on HSV color using digital image processing. IOP Conference Series: Earth and Environmental Science. 2022 Dec 1;1116(1):012062.
     Google Scholar
  25. Ramya R, Mala K, Selva Nidhyananthan S. 3D Facial expression recognition using multi-channel deep learning framework. Circuits, Systems, and Signal Processing. 2019 May 23;39(2):789–804.
     Google Scholar
  26. Seyed Mohamad Javidan, Banakar A, Keyvan Asefpour Vakilian, Yiannis Ampatzidis. Tomato leaf diseases classification using image processing and weighted ensemble learning. Agronomy Journal. 2023 Mar 16;
     Google Scholar
  27. Phan QH, Nguyen VT, Lien CH, Duong TP, Max Ti-Kuang Hou, Le NB. Classification of tomato fruit using yolov5 and convolutional neural network models. Plants. 2023 Feb 9;12(4):790–0.
     Google Scholar
  28. Baser P, Saini JR, Kotecha K. TomConv: An improved CNN model for diagnosis of diseases in tomato plant leaves. Procedia Computer Science. 2023;218:1825–33.
     Google Scholar
  29. Ojetunmibi T, Asagba PO, Okengwu UA. Pneumonia disease detection and classification system using naive Bayesian technique. Scientia Africana. 2023 May 31;22(1):97–114.
     Google Scholar