Feature Extraction for Multispectral Analysis of Cereal Crops Using Optimized Computer Vision Pipelines 44

Authors

DOI:

https://doi.org/10.18372/1990-5548.86.20561

Keywords:

multispectral analysis, computer vision, unmanned aerial vehicle, precision farming, feature stabilization

Abstract

The article presents the results of a study aimed at improving the stability, reproducibility, and structural consistency of computer vision pipelines for multispectral UAV imagery of winter wheat canopies. A new adaptive preprocessing model is introduced, incorporating illumination normalization based on a modified Retinex/MSRCR algorithm, entropy-regulated spatial-spectral filtering for noise suppression, and instability-driven spectral feature fusion to obtain stable multispectral descriptors. The model is formulated as a multi-objective preprocessing framework, jointly optimizing illumination invariance, noise robustness, structural preservation, and information richness. Experiments conducted on the open-access UAV dataset of nine winter-wheat fields (Switzerland) demonstrated a reduction of the coefficient of variation to 0.12 and RMSE to 0.089, together with improvements in structural similarity (SSIM = 0.923) and spectral entropy (H = 5.9), significantly outperforming classical normalization methods. The results confirm the effectiveness of the proposed approach in mitigating illumination heterogeneity and sensor-induced distortions, ensuring stable and phenologically consistent feature extraction. The developed framework can be integrated into computer-integrated and robotic precision-farming systems to enhance the reliability of automated monitoring and decision-support processes in winter-wheat production.

Author Biographies

Victor Sineglazov , State University "Kyiv Aviation Institute"

Doctor of Engineering Science

Professor

Head of the Department Aviation Computer-Integrated Complexes

Faculty of Air Navigation Electronics and Telecommunications

Roman Koniushenko, State University "Kyiv Aviation Institute"

Postgraduate Student

Aviation Computer-Integrated Complexes Department

Faculty of Air Navigation, Electronics and Telecommunications

References

IPPC Secretariat. Climate-change impacts on plant pests: a technical resource to support national and regional plant protection organizations. Rome: FAO on behalf of the Secretariat of the International Plant Protection Convention, 2024. 53 p. https://doi.org/10.4060/cd1615en.

C. Zhang, H. Kerner, S. Wang, P. Hao, Z. Li, K. A. Hunt, J. Abernethy, H. Zhao, F. Gao, L. Di, C. Guo, Z. Liu, Z. Yang, R. Mueller, C. Boryan, Q. Chen, P. C. Beeson, H. K. Zhang, and Y. Shen, “Remote sensing for crop mapping: A perspective on current and future crop-specific land cover data products,” Remote Sensing of Environment, vol. 330, p. 114995, 2025. https://doi.org/10.1016/j.rse.2025.114995

H. O. Velesaca, P. L. Suárez, R. Mira, and A. D. Sappa, “Computer vision based food grain classification: A comprehensive survey,” Computers and Electronics in Agriculture, vol. 187, p. 106287, 2021. https://doi.org/10.1016/j.compag.2021.106287

K. Halder, A. K. Srivastava, W. Zheng, K. Alsafadi, G. Zhao, M. Maerker, M. Singh, L. Guoging, A. Ghosh, M. Vianna, S. C. Pal, R. Shukla, M. Utthasini, P. Rosso, A. Bhattacharya, U. Chatterjee, D. Bisai, T. Gaiser, D. Behrend, L. Han, and F. Ewert, “A robust and scalable crop mapping framework using advanced machine learning and optical and SAR imageries,” Smart Agricultural Technology, vol. 12, p. 101354, 2025. https://doi.org/10.1016/j.atech.2025.101354

M. Ashraf, M. Abrar, N. Qadeer, A. A. Alshdadi, T. Sabbah, and M. A. Khan, “A convolutional neural network model for wheat crop disease prediction,” Computers, Materials & Continua, vol. 75, no. 2, pp. 3867–3882, 2023. https://doi.org/10.32604/cmc.2023.035498

W. Zhang, S. Zhu, D. Han, T. Yang, Y. Jiang, J. Wang, F. Wu, Z. Yao, C. Sun, and T. Liu, “Classification of pre-winter wheat seedling conditions based on UAV images and local optimized features (LOFs),” Journal of Integrative Agriculture, 2025. https://doi.org/10.1016/j.jia.2025.07.031

H. Zhou, Q. Li, B. Qin, H. Min, S. Liang, X. Wang, J. Cai, Q. Zhou, M. Huang, D. Jiang, Y. Zhong, and J. Chen, “High-throughput wheat seedling phenotyping via UAV-based semantic segmentation and ground sample distance driven pixel-to-area mapping,” Computers and Electronics in Agriculture, vol. 238, p. 110819, 2025. https://doi.org/10.1016/j.compag.2025.110819

L. Sandoval-Pillajo, I. García-Santillán, M. Pusdá-Chulde, and A. Giret, “Weed detection based on deep learning from UAV imagery: A review,” Smart Agricultural Technology, vol. 12, p. 101147, 2025. https://doi.org/10.1016/j.atech.2025.101147

Anderegg J. UAV dataset of nine wheat fields in Switzerland with raw, processed and meta data [Electronic resource] / Jonas Anderegg, Flavian Tschurr // ETH Zurich. – Mode of access: https://doi.org/10.3929/ethz-b-000662770.

Downloads

Published

2025-12-14

Issue

Section

AUTOMATION AND COMPUTER-INTEGRATED TECHNOLOGIES