Role of Hyperspectral imaging for Precision Agriculture Monitoring
Abstract
In the modern era precision agriculture has started emerging as a new revolution. Remote sensing is generally regarded as one of the most important techniques for agricultural monitoring at multiple spatiotemporal scales. This has expanded from traditional systems such as imaging systems, agricultural monitoring, atmospheric science, geology and defense to a variety of newly developing laboratory-based measurements. The development of hyperspectral imaging systems has taken precision agriculture a step further. Because of the spectral range limit of multispectral imagery, the detection of minute changes in materials is significantly lacking, this shortcoming can be overcome by hyperspectral sensors and prove useful in many agricultural applications. Recently, various emerging platforms also popularized hyperspectral remote sensing technology, however, it comes with the complexity of data storage and processing. This article provides a detailed overview of hyperspectral remote sensing that can be used for better estimation in agricultural applications.
Full Text:
PDFReferences
E. Lioubimtseva and G. M. Henebry, ―Climate and environmental change in arid Central Asia: Impacts, vulnerability, and adaptations,‖ J. Arid Environ., vol. 73, no. 11, pp. 963–977, 2009.
X. Wei, ―A synthesis program: Reducing uncertainties of the terrestrial biosphere carbon cycle at various spatio temporal scales,‖ The University of Maine, 2020.
P. J. Zarco-Tejada, V. González-Dugo, and J. A. J. Berni,
―Fluorescence, temperature and narrow-band indices acquired from a UAV platform for water stress detection using a micro-hyperspectral imager and a thermal camera,‖ Remote Sens. Environ., vol. 117, pp. 322–337, 2012.
N. Liu, P. A. Townsend, M. R. Naber, P. C. Bethke, W. B. Hills, and
Y. Wang, ―Hyperspectral imagery to monitor crop nutrient status within and across growing seasons,‖ Remote Sens. Environ., vol. 255, no. 112303, p. 112303, 2021.
T. Rumpf, A.-K. Mahlein, U. Steiner, E.-C. Oerke, H.-W. Dehne, and
L. Plümer, ―Early detection and classification of plant diseases with Support Vector Machines based on hyperspectral reflectance,‖ Comput. Electron. Agric., vol. 74, no. 1, pp. 91–99, 2010.
A. J. Foster, V. G. Kakani, and J. Mosali, ―Estimation of bioenergy crop yield and N status by hyperspectral canopy reflectance and partial least square regression,‖ Precis. Agric., vol. 18, no. 2, pp. 192– 209, 2017.
W. S. Lee, V. Alchanatis, C. Yang, M. Hirafuji, D. Moshou, and C. Li, ―Sensing technologies for precision specialty crop production,‖ Comput. Electron. Agric., vol. 74, no. 1, pp. 2–33, 2010.
C. Fischer and I. Kakoulli, ―Multispectral and hyperspectral imaging technologies in conservation: current research and potential applications,‖ Stud. Conserv., vol. 51, no. sup1, pp. 3–16, 2006.
L. Ravikanth, D. S. Jayas, N. D. G. White, P. G. Fields, and D.-W. Sun, ―Extraction of spectral information from hyperspectral data and application of hyperspectral imaging for food and agricultural products,‖ Food Bioproc. Tech., vol. 10, no. 1, pp. 1–33, 2017.
B.-C. Gao, M. J. Montes, and C. O. Davis, ―Refinement of wavelength calibrations of hyperspectral imaging data using a spectrum-matching technique,‖ Remote Sens. Environ., vol. 90, no. 4, pp. 424–433, 2004.
D. Wu and D.-W. Sun, ―Advanced applications of hyperspectral imaging technology for food quality and safety analysis and assessment: A review — Part I: Fundamentals,‖ Innov. Food Sci. Emerg. Technol., vol. 19, pp. 1–14, 2013.
M. Teke, H. S. Deveci, O. Haliloğlu, S. Z. Gürbüz, and U. Sakarya, "A short survey of hyperspectral remote sensing applications in agriculture‖ in 2013 6th International Conference on Recent Advances in Space Technologies (RAST), Istanbul, Turkey,12-14 June 2013, pp. 171-176. IEEE, 2013.
L. Guanter et al., ―The EnMAP spaceborne imaging spectroscopy mission for earth observation,‖ Remote Sens. (Basel), vol. 7, no. 7, pp. 8830–8857, 2015.
N. Levin et al., ―Remote sensing of night lights: A review and an outlook for the future,‖ Remote Sens. Environ., vol. 237, no. 111443, p. 111443, 2020.
A. D. Vibhute, K. V. Kale, R. K. Dhumal, and S. C. Mehrotra,, "Hyperspectral imaging data atmospheric correction challenges and solutions using QUAC and FLAASH algorithms." in 2015 International Conference on Man and Machine Interfacing (MAMI), Bhubaneswar, India, Dec. 2015, pp. 1-6. IEEE, 2015.
T. Hariyanto, A. Kurniawan, C. B. Pribadi, and R. Al. Amin, "Optimization of Ground Control Point (GCP) and Independent Control Point (ICP) on Orthorectification of High-Resolution Satellite Imagery," in E3S Web of Conferences, Jan 2019, vol. 94, p. 02008.
M. Vidal and J. M. Amigo, ―Pre-processing of hyperspectral images. Essential steps before image analysis,‖ Chemometr. Intell. Lab. Syst., vol. 117, pp. 138–148, 2012.
S. O’Hara and B. A. Draper, ―Introduction to the Bag of features paradigm for image classification and retrieval,‖ arXiv [cs.CV], 2011.
L. Fan et al., ―Hyperspectral-based estimation of leaf nitrogen content in corn using optimal selection of multiple spectral variables,‖ Sensors (Basel), vol. 19, no. 13, p. 2898, 2019.
S. Singh, N. Prasad, R. Verma, M. Semwal, and Mohd. S. Khan, "A portable Hyperspectral imaging system to assess the effect of different nutrient management practices on Chamomile (Chamomila recutita),‖ in 2020 International Conference on Smart Innovations in Design, Environment, Management, Planning and Computing (ICSIDEMPC), Aurangabad, India, Oct. 2020, pp. 13-19. IEEE, 2020.
A. N. Parveen, H. H. Inbarani, and E.N. Sathishkumar,
―Performance analysis of unsupervised feature selection methods,‖ in 2012 International Conference on Computing, Communication and Applications, Dindigul, India, Feb. 2012, pp. 1-7. IEEE, 2012
C. Zhang and Y. Zheng, ―Hyperspectral remote sensing image classification based on combined SVM and LDA,‖ in Multispectral, Hyperspectral, and Ultraspectral Remote Sensing Technology, Techniques and Applications V, 2014.
X. Huang, L. Wu, and Y. Ye, ―A review on dimensionality reduction techniques,‖ Intern. J. Pattern Recognit. Artif. Intell., vol. 33, no. 10, p. 1950017, 2019.
P. S. Thenkabail, I. Mariotto, M. K. Gumma, E. M. Middleton, D. R. Landis, and K. F. Huemmrich, ―Selection of hyperspectral narrowbands (HNBs) and composition of hyperspectral twoband vegetation indices (HVIs) for biophysical characterization and
discrimination of crop types using field reflectance and Hyperion/EO- 1 data,‖ IEEE J. Sel. Top. Appl. Earth Obs. Remote Sens., vol. 6, no. 2, pp. 427–439, 2013.
D. F. Barbin, G. ElMasry, D.-W. Sun, and P. Allen, ―Predicting quality and sensory attributes of pork using near-infrared hyperspectral imaging,‖ Anal. Chim. Acta, vol. 719, pp. 30–42, 2012.
B. Lu, P. Dao, J. Liu, Y. He, and J. Shang, ―Recent advances of hyperspectral imaging technology and applications in agriculture,‖ Remote Sens. (Basel), vol. 12, no. 16, p. 2659, 2020.
J. Engel et al., ―Breaking with trends in pre-processing?,‖ Trends Analyt. Chem., vol. 50, pp. 96–106, 2013.
B. Jia et al., ―Essential processing methods of hyperspectral images of agricultural and food products,‖ Chemometr. Intell. Lab. Syst., vol. 198, no. 103936, p. 103936, 2020.
B. B. Lin, ―Resilience in agriculture through crop diversification: Adaptive management for environmental change,‖ Bioscience, vol. 61, no. 3, pp. 183–193, 2011.
S. C. Hassler and F. Baysal-Gurel, ―Unmanned aircraft system (UAS) technology and applications in agriculture,‖ Agronomy (Basel), vol. 9, no. 10, p. 618, 2019.
X. Xie et al., ―Hyperspectral characteristics and growth monitoring of rice (Oryza sativa) under asymmetric warming,‖ Int. J. Remote Sens., vol. 34, no. 23, pp. 8449–8462, 2013.
R. Ranjan, U. K. Chopra, R. N. Sahoo, A. K. Singh, and S. Pradhan,
―Assessment of plant nitrogen stress in wheat (Triticum aestivumL.) through hyperspectral indices,‖ Int. J. Remote Sens., vol. 33, no. 20, pp. 6342–6360, 2012.
H. Tao et al., ―Estimation of the yield and plant height of winter wheat using UAV-based hyperspectral images,‖ Sensors (Basel), vol. 20, no. 4, p. 1231, 2020.
C. Nguyen, V. Sagan, M. Maimaitiyiming, M. Maimaitijiang, S. Bhadra, and M. T. Kwasniewski, ―Early detection of plant viral disease using hyperspectral imaging and deep learning,‖ Sensors (Basel), vol. 21, no. 3, p. 742, 2021.
Y. Kim, D. M. Glenn, J. Park, H. K. Ngugi, and B. L. Lehman,
―Hyperspectral image analysis for water stress detection of apple trees,‖ Comput. Electron. Agric., vol. 77, no. 2, pp. 155–160, 2011.
V. Gonzalez-Dugo, P. Hernandez, I. Solis, and P. Zarco-Tejada,
―Using high-resolution hyperspectral and thermal airborne imagery to assess physiological condition in the context of wheat phenotyping,‖ Remote Sens. (Basel), vol. 7, no. 10, pp. 13586–13605, 2015.
C. Yang and J. H. Everitt, ―Mapping three invasive weeds using airborne hyperspectral imagery,‖ Ecol. Inform., vol. 5, no. 5, pp. 429– 439, 2010.
O. A. Montesinos-López et al., ―Predicting grain yield using canopy hyperspectral reflectance in wheat breeding data,‖ Plant Methods, vol. 13, no. 1, p. 4, 2017.
J. G. P. W. Clevers and L. Kooistra, ―Using hyperspectral remote sensing data for retrieving canopy chlorophyll and nitrogen content,‖ IEEE J. Sel. Top. Appl. Earth Obs. Remote Sens., vol. 5, no. 2, pp. 574–583, 2012.
B. Li et al., ―Above-ground biomass estimation and yield prediction in potato by using UAV-based RGB and hyperspectral imaging,‖ ISPRS J. Photogramm. Remote Sens., vol. 162, pp. 161–172, 2020.
K. Nagasubramanian, S. Jones, A. K. Singh, S. Sarkar, A. Singh, and
B. Ganapathysubramanian, ―Plant disease identification using explainable 3D deep learning on hyperspectral images,‖ Plant Methods, vol. 15, no. 1, p. 98, 2019.
M. Zhang, Z. Qin, X. Liu, and S. L. Ustin, ―Detection of stress in tomatoes induced by late blight disease in California, USA, using hyperspectral remote sensing,‖ ITC j., vol. 4, no. 4, pp. 295–310, 2003.
A.-K. Mahlein, U. Steiner, C. Hillnhütter, H.-W. Dehne, and E.-C. Oerke, ―Hyperspectral imaging for small-scale analysis of symptoms caused by different sugar beet diseases,‖ Plant Methods, vol. 8, no. 1, p. 3, 2012.
X. Zhang et al., ―A deep learning-based approach for automated yellow rust disease detection from high-resolution hyperspectral UAV images,‖ Remote Sens. (Basel), vol. 11, no. 13, p. 1554, 2019.
J. Yue et al., ―Estimation of winter wheat above-ground biomass using unmanned aerial vehicle-based snapshot hyperspectral sensor and crop height improved models,‖ Remote Sens. (Basel), vol. 9, no. 7, p. 708, 2017.
J. Bendig et al., ―Combining UAV-based plant height from crop surface models, visible, and near infrared vegetation indices for biomass monitoring in barley,‖ ITC j., vol. 39, pp. 79–87, 2015.
P. Sudhanshu Sekhar, A. Daniel P, and P. Suranjan, ―Application of vegetation indices for agricultural crop yield prediction using neural network techniques,‖ Remote Sens. (Basel), vol. 2, no. 3, pp. 673– 696, 2010.
Refbacks
- There are currently no refbacks.
------------------------------------------------------------------------------------------------------------------------
The ADBU Journal of Engineering Technology (AJET)" ISSN:2348-7305
This journal is published under the terms of the Creative Commons Attribution (CC-BY) (http://creativecommons.org/licenses/)