Identification of weeds in fields based on computer vision technology
DOI:
https://doi.org/10.15587/1729-4061.2023.284600Keywords:
computer vision, image segmentation, neural network model, pattern recognition algorithmsAbstract
The problem of multiple zones in computer vision, including pattern recognition in the agricultural sector, occupies a special place in the field of artificial intelligence in the modern aspect.
The object of the study is the recognition of weeds based on deep learning and computer vision. The subject of the study is the effective use of neural network models in training, involving classification and processing using datasets of plants and weeds. The relevance of the study lies in the demand of the modern world in the use of new information technologies in industrial agriculture, which contributes to improving the efficiency of agro-industrial complexes. The interest of private agricultural enterprises and the state is caused by an increase in the yield of agricultural products. To recognize weeds, machine learning methods, in particular neural networks, were used. The process of weed recognition is described using the Mark model, as a result of processing 1,562 pictures, segmented images are obtained. Due to the annual increase in weeds on the territory of Kazakhstan and in the course of solving these problems, a new plant recognition code was developed and written in the scanner software module. The scanner, in turn, provides automatic detection of weeds. Based on the results of a trained neural network based on the MaskRCNN neural network model written in the scanner software module meeting new time standards, the automated plant scanning and recognition system was improved. The weed was recognized in an average of 0.2 seconds with an accuracy of 89 %, while the additional human factor was completely removed. The use of new technology helps to control weeds and contributes to solving the problem of controlling them
References
- Patrício, D. I., Rieder, R. (2018). Computer vision and artificial intelligence in precision agriculture for grain crops: A systematic review. Computers and Electronics in Agriculture, 153, 69–81. doi: https://doi.org/10.1016/j.compag.2018.08.001
- Gomes, J. F. S., Leta, F. R. (2012). Applications of computer vision techniques in the agriculture and food industry: a review. European Food Research and Technology, 235 (6), 989–1000. doi: https://doi.org/10.1007/s00217-012-1844-2
- Urmashev, B., Buribayev, Z., Amirgaliyeva, Z., Ataniyazova, A., Zhassuzak, M., Turegali, A. (2021). Development of a weed detection system using machine learning and neural network algorithms. Eastern-European Journal of Enterprise Technologies, 6 (2 (114)), 70–85. doi: https://doi.org/10.15587/1729-4061.2021.246706
- Sunil, G. C., Zhang, Y., Koparan, C., Ahmed, M. R., Howatt, K., Sun, X. (2022). Weed and crop species classification using computer vision and deep learning technologies in greenhouse conditions. Journal of Agriculture and Food Research, 9, 100325. doi: https://doi.org/10.1016/j.jafr.2022.100325
- Tian, H., Wang, T., Liu, Y., Qiao, X., Li, Y. (2020). Computer vision technology in agricultural automation – A review. Information Processing in Agriculture, 7 (1), 1–19. doi: https://doi.org/10.1016/j.inpa.2019.09.006
- Ahmad, Z., Shahid Khan, A., Wai Shiang, C., Abdullah, J., Ahmad, F. (2020). Network intrusion detection system: A systematic study of machine learning and deep learning approaches. Transactions on Emerging Telecommunications Technologies, 32 (1). doi: https://doi.org/10.1002/ett.4150
- Li, Y., Randall, C. J., Woesik, R. van, Ribeiro, E. (2019). Underwater video mosaicing using topology and superpixel-based pairwise stitching. Expert Systems with Applications, 119, 171–183. doi: https://doi.org/10.1016/j.eswa.2018.10.041
- Sivarajan, S., Maharlooei, M., Bajwa, S. G., Nowatzki, J. (2018). Impact of soil compaction due to wheel traffic on corn and soybean growth, development and yield. Soil and Tillage Research, 175, 234–243. doi: https://doi.org/10.1016/j.still.2017.09.001
- Liu, H., Lee, S.-H., Chahl, J. S. (2016). A review of recent sensing technologies to detect invertebrates on crops. Precision Agriculture, 18 (4), 635–666. doi: https://doi.org/10.1007/s11119-016-9473-6
- Sabzi, S., Abbaspour-Gilandeh, Y., García-Mateos, G. (2018). A fast and accurate expert system for weed identification in potato crops using metaheuristic algorithms. Computers in Industry, 98, 80–89. doi: https://doi.org/10.1016/j.compind.2018.03.001
- Toseef, M., Khan, M. J. (2018). An intelligent mobile application for diagnosis of crop diseases in Pakistan using fuzzy inference system. Computers and Electronics in Agriculture, 153, 1–11. doi: https://doi.org/10.1016/j.compag.2018.07.034
- Magic, M., Magic, J. (2019). Image Classification Using Python and Techniques of Computer Vision and Machine Learning. Independently published, 114.
- Huang, Y., Jiang, L., Han, T., Xu, S., Liu, Y., Fu, J. (2022). High-Accuracy Insulator Defect Detection for Overhead Transmission Lines Based on Improved YOLOv5. Applied Sciences, 12 (24), 12682. doi: https://doi.org/10.3390/app122412682
- Kubo, S., Yamane, T., Chun, P. (2022). Study on Accuracy Improvement of Slope Failure Region Detection Using Mask R-CNN with Augmentation Method. Sensors, 22 (17), 6412. doi: https://doi.org/10.3390/s22176412
- Osorio, K., Puerto, A., Pedraza, C., Jamaica, D., Rodríguez, L. (2020). A Deep Learning Approach for Weed Detection in Lettuce Crops Using Multispectral Images. AgriEngineering, 2 (3), 471–488. doi: https://doi.org/10.3390/agriengineering2030032
- Almodaresi, S. A., Mohammadrezaei, M., Dolatabadi, M., Nateghi, M. R. (2019). Qualitative Analysis of Groundwater Quality Indicators Based on Schuler and Wilcox Diagrams: IDW and Kriging Models. Journal of Environmental Health and Sustainable Development. doi: https://doi.org/10.18502/jehsd.v4i4.2023
- Tseng, H.-H., Yang, M.-D., Saminathan, R., Hsu, Y.-C., Yang, C.-Y., Wu, D.-H. (2022). Rice Seedling Detection in UAV Images Using Transfer Learning and Machine Learning. Remote Sensing, 14 (12), 2837. doi: https://doi.org/10.3390/rs14122837
- Chilukuri, D. M., Yi, S., Seong, Y. (2022). A robust object detection system with occlusion handling for mobile devices. Computational Intelligence, 38 (4), 1338–1364. doi: https://doi.org/10.1111/coin.12511
- Yu, Y., Zhang, K., Yang, L., Zhang, D. (2019). Fruit detection for strawberry harvesting robot in non-structural environment based on Mask-RCNN. Computers and Electronics in Agriculture, 163, 104846. doi: https://doi.org/10.1016/j.compag.2019.06.001
- Su, W.-H., Zhang, J., Yang, C., Page, R., Szinyei, T., Hirsch, C. D., Steffenson, B. J. (2020). Automatic Evaluation of Wheat Resistance to Fusarium Head Blight Using Dual Mask-RCNN Deep Learning Frameworks in Computer Vision. Remote Sensing, 13 (1), 26. doi: https://doi.org/10.3390/rs13010026
- Valladares, S., Toscano, M., Tufiño, R., Morillo, P., Vallejo-Huanga, D. (2021). Performance Evaluation of the Nvidia Jetson Nano Through a Real-Time Machine Learning Application. Intelligent Human Systems Integration 2021, 343–349. doi: https://doi.org/10.1007/978-3-030-68017-6_51
- Jain, N., Gupta, V., Shubham, S., Madan, A., Chaudhary, A., Santosh, K. C. (2021). Understanding cartoon emotion using integrated deep neural network on large dataset. Neural Computing and Applications, 34 (24), 21481–21501. doi: https://doi.org/10.1007/s00521-021-06003-9
- Liu, W., Chen, S., Guo, L., Zhu, X., Liu, J. (2021). CPTR: Full transformer network for image captioning. arXiv. doi: https://doi.org/10.48550/arXiv.2101.10804
- Rashid, K. M Louis, J. (2019). Times-series data augmentation and deep learning for construction equipment activity recognition. Advanced Engineering Informatics, 42, 100944. doi: https://doi.org/10.1016/j.aei.2019.100944
- Srivastava, S., Divekar, A. V., Anilkumar, C., Naik, I., Kulkarni, V., Pattabiraman, V. (2021). Comparative analysis of deep learning image detection algorithms. Journal of Big Data, 8 (1). doi: https://doi.org/10.1186/s40537-021-00434-w
- Ghayour, L., Neshat, A., Paryani, S., Shahabi, H., Shirzadi, A., Chen, W. et al. (2021). Performance Evaluation of Sentinel-2 and Landsat 8 OLI Data for Land Cover/Use Classification Using a Comparison between Machine Learning Algorithms. Remote Sensing, 13 (7), 1349. doi: https://doi.org/10.3390/rs13071349
- Liu, Y.-C., Ma, C.-Y., He, Z., Kuo, C.-W., Chen, K., Zhang, P. et al. (2021). Unbiased teacher for semi-supervised object detection. arXiv. doi: https://doi.org/10.48550/arXiv.2102.09480
- Yeshmukhametov, A. N., Koganezawa, K., Buribayev, Z., Amirgaliyev, Y., Yamamoto, Y. (2020). Study on multi-section continuum robot wire-tension feedback control and load manipulability. Industrial Robot: The International Journal of Robotics Research and Application, 47 (6), 837–845. doi: https://doi.org/10.1108/ir-03-2020-0054
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2023 Mira Kaldarova, Akerke Аkanova, Aizhan Nazyrova, Assel Mukanova, Assemgul Tynykulova
This work is licensed under a Creative Commons Attribution 4.0 International License.
The consolidation and conditions for the transfer of copyright (identification of authorship) is carried out in the License Agreement. In particular, the authors reserve the right to the authorship of their manuscript and transfer the first publication of this work to the journal under the terms of the Creative Commons CC BY license. At the same time, they have the right to conclude on their own additional agreements concerning the non-exclusive distribution of the work in the form in which it was published by this journal, but provided that the link to the first publication of the article in this journal is preserved.
A license agreement is a document in which the author warrants that he/she owns all copyright for the work (manuscript, article, etc.).
The authors, signing the License Agreement with TECHNOLOGY CENTER PC, have all rights to the further use of their work, provided that they link to our edition in which the work was published.
According to the terms of the License Agreement, the Publisher TECHNOLOGY CENTER PC does not take away your copyrights and receives permission from the authors to use and dissemination of the publication through the world's scientific resources (own electronic resources, scientometric databases, repositories, libraries, etc.).
In the absence of a signed License Agreement or in the absence of this agreement of identifiers allowing to identify the identity of the author, the editors have no right to work with the manuscript.
It is important to remember that there is another type of agreement between authors and publishers – when copyright is transferred from the authors to the publisher. In this case, the authors lose ownership of their work and may not use it in any way.