251
Views
37
CrossRef citations to date
0
Altmetric
Miscellany

Effect of sensor view angle on the assessment of agronomic traits by ground level hyper-spectral reflectance measurements in durum wheat under contrasting Mediterranean conditions

, , , &
Pages 1131-1152 | Received 07 Dec 2001, Accepted 06 Jan 2003, Published online: 03 Jun 2010

Keep up to date with the latest research on this topic with citation updates for this article.

Read on this site (4)

Yi-fan Li, Zhang-hua Xu, Zhen-bang Hao, Xiong Yao, Qi Zhang, Xu-ying Huang, Bin Li, An-qi He, Zeng-lu Li & Xiao-yu Guo. (2023) A comparative study of the performances of joint RFE with machine learning algorithms for extracting Moso bamboo (Phyllostachys pubescens) forest based on UAV hyperspectral images. Geocarto International 38:1.
Read now
Yong Li, Tong Wu, Ying Ge, Shunzhong Xi, Tingxuan Zhang & Wusiqin Zhang. (2023) Semi-supervised cooperative regression model for small sample estimation of citrus leaf nitrogen content with UAV images. International Journal of Remote Sensing 44:23, pages 7237-7262.
Read now
Tiansheng Li, Zhen Zhu, Jing Cui, Jianhua Chen, Xiaoyan Shi, Xu Zhao, Menghao Jiang, Yutong Zhang, Weiju Wang & Haijiang Wang. (2021) Monitoring of leaf nitrogen content of winter wheat using multi-angle hyperspectral data. International Journal of Remote Sensing 42:12, pages 4672-4692.
Read now
F. Alvaro, L. F. García del Moral & C. Royo. (2007) Usefulness of remote sensing for the assessment of growth traits in individual cereal plants grown in the field. International Journal of Remote Sensing 28:11, pages 2497-2512.
Read now

Articles from other publishers (33)

James G. Nuttall, Ashley J. Wallace, Audrey J. Delahunty, Eileen M. Perry, Alexander B. Clancy, Joe F. Panozzo, Glenn J. Fitzgerald & Cassandra K. Walker. (2023) Lentil grain quality and segregation opportunities in‐field using remote sensing. Agronomy Journal 116:1, pages 121-140.
Crossref
Dunliang Wang, Rui Li, Tao Liu, Shengping Liu, Chengming Sun & Wenshan Guo. (2023) Combining vegetation, color, and texture indices with hyperspectral parameters using machine-learning methods to estimate nitrogen concentration in rice stems and leaves. Field Crops Research 304, pages 109175.
Crossref
Geng Bai, Yufeng Ge, Bryan Leavitt, John A. Gamon & David Scoby. (2023) Goniometer in the air: Enabling BRDF measurement of crop canopies using a cable-suspended plant phenotyping platform. Biosystems Engineering 230, pages 344-360.
Crossref
Dafni Despoina Avgoustaki, Ioannis Avgoustakis, Carlos Corchado Miralles, Jonas Sohn & George Xydis. (2022) Autonomous Mobile Robot with Attached Multispectral Camera to Monitor the Development of Crops and Detect Nutrient and Water Deficiencies in Vertical Farms. Agronomy 12:11, pages 2691.
Crossref
Paul Heinemann, Stephan Haug & Urs Schmidhalter. (2022) Evaluating and defining agronomically relevant detection limits for spectral reflectance-based assessment of N uptake in wheat. European Journal of Agronomy 140, pages 126609.
Crossref
Zongpeng Li, Zhen Chen, Qian Cheng, Fuyi Duan, Ruixiu Sui, Xiuqiao Huang & Honggang Xu. (2022) UAV-Based Hyperspectral and Ensemble Machine Learning for Predicting Yield in Winter Wheat. Agronomy 12:1, pages 202.
Crossref
Changchun Li, Yilin Wang, Chunyan Ma, Weinan Chen, Yacong Li, Jingbo Li, Fan Ding & Zhen Xiao. (2021) Improvement of Wheat Grain Yield Prediction Model Performance Based on Stacking Technique. Applied Sciences 11:24, pages 12164.
Crossref
Wei Yang, Tyler Nigon, Ziyuan Hao, Gabriel Dias Paiao, Fabián G. Fernández, David Mulla & Ce Yang. (2021) Estimation of corn yield based on hyperspectral imagery and convolutional neural network. Computers and Electronics in Agriculture 184, pages 106092.
Crossref
Yufeng Jiang, Li Zhang, Min Yan, Jianguo Qi, Tianmeng Fu, Shunxiang Fan & Bowei Chen. (2021) High-Resolution Mangrove Forests Classification with Machine Learning Using Worldview and UAV Hyperspectral Data. Remote Sensing 13:8, pages 1529.
Crossref
Zhenjiang Zhou, Julien Morel, David Parsons, Sergey V. Kucheryavskiy & Anne-Maj Gustavsson. (2019) Estimation of yield and quality of legume and grass mixtures using partial least squares and support vector machine analysis of spectral data. Computers and Electronics in Agriculture 162, pages 246-253.
Crossref
Stefano Marino & Arturo Alvino. (2019) Detection of Spatial and Temporal Variability of Wheat Cultivars by High-Resolution Vegetation Indices. Agronomy 9:5, pages 226.
Crossref
M.M. Rahman, D.W. Lamb & S.M. Samborski. (2019) Reducing the influence of solar illumination angle when using active optical sensor derived NDVIAOS to infer fAPAR for spring wheat (Triticum aestivum L.). Computers and Electronics in Agriculture 156, pages 1-9.
Crossref
Hanyue Chen, Wenjiang Huang, Wang Li, Zheng Niu, Liming Zhang & Shihe Xing. (2018) Estimation of LAI in Winter Wheat from Multi-Angular Hyperspectral VNIR Data: Effects of View Angles and Plant Architecture. Remote Sensing 10:10, pages 1630.
Crossref
Francisco M. Padilla, Marisa Gallardo, M. Teresa Peña-Fleitas, Romina de Souza & Rodney B. Thompson. (2018) Proximal Optical Sensors for Nitrogen Management of Vegetable Crops: A Review. Sensors 18:7, pages 2083.
Crossref
Xiao Song, Wei Feng, Li He, Duanyang Xu, Hai-Yan Zhang, Xiao Li, Zhi-Jie Wang, Craig A. Coburn, Chen-Yang Wang & Tian-Cai Guo. (2016) Examining view angle effects on leaf N estimation in wheat using field reflectance spectroscopy. ISPRS Journal of Photogrammetry and Remote Sensing 122, pages 57-67.
Crossref
Nikolaos Katsoulas, Angeliki Elvanidi, Konstantinos P. Ferentinos, Murat Kacira, Thomas Bartzanas & Constantinos Kittas. (2016) Crop reflectance monitoring as a tool for water stress detection in greenhouses: A review. Biosystems Engineering 151, pages 374-398.
Crossref
Li He, Xiao Song, Wei Feng, Bin-Bin Guo, Yuan-Shuai Zhang, Yong-Hua Wang, Chen-Yang Wang & Tian-Cai Guo. (2016) Improved remote sensing of leaf nitrogen concentration in winter wheat using multi-angular hyperspectral data. Remote Sensing of Environment 174, pages 122-133.
Crossref
Abdelhalim Elazab, Jordi Bort, Bangwei Zhou, María Dolors Serret, María Teresa Nieto-Taladriz & José Luis Araus. (2015) The combined use of vegetation indices and stable isotopes to predict durum wheat grain yield under contrasting water conditions. Agricultural Water Management 158, pages 196-208.
Crossref
William R. Gould. 2014. Wiley StatsRef: Statistics Reference Online. Wiley StatsRef: Statistics Reference Online.
Francisco M. Padilla, M. Teresa Peña-Fleitas, Marisa Gallardo & Rodney B. Thompson. (2014) Evaluation of optical sensor measurements of canopy reflectance and of leaf flavonols and chlorophyll contents to assess crop nitrogen status of muskmelon. European Journal of Agronomy 58, pages 39-52.
Crossref
Gustavo A. Lobos, Iván Matus, Alejandra Rodriguez, Sebastián Romero‐Bravo, José Luis Araus & Alejandro del Pozo. (2014) Wheat genotypic variability in grain yield and carbon isotope discrimination under Mediterranean conditions assessed by spectral reflectance. Journal of Integrative Plant Biology 56:5, pages 470-479.
Crossref
Fábio M. Breunig, Lênio S. Galvão, Antonio R. Formaggio & José C. N. Epiphanio. (2013) Influence of data acquisition geometry on soybean spectral response simulated by the prosail model. Engenharia Agrícola 33:1, pages 176-187.
Crossref
William R. Gould. 2001. Encyclopedia of Environmetrics. Encyclopedia of Environmetrics.
Fábio M. Breunig, Lênio S. Galvão, Antônio R. Formaggio & José C.N. Epiphanio. (2012) Variation of MODIS reflectance and vegetation indices with viewing geometry and soybean development. Anais da Academia Brasileira de Ciências 84:2, pages 263-274.
Crossref
Cynthia Ann Grant, Natale Di Fonzo(Deceased)(Deceased) & Michele Pisante. 2012. Durum Wheat. Durum Wheat 37 55 .
B. Tubaña, D. Harrell, T. Walker, J. Teboh, J. Lofton, Y. Kanke & S. Phillips. (2011) Relationships of Spectral Vegetation Indices with Rice Biomass and Grain Yield at Different Sensor View Angles. Agronomy Journal 103:5, pages 1405-1413.
Crossref
Lars Eklundh, Hongxiao Jin, Per Schubert, Radoslaw Guzinski & Michal Heliasz. (2011) An Optical Sensor Network for Vegetation Phenology Monitoring and Satellite Data Calibration. Sensors 11:8, pages 7678-7709.
Crossref
Daniela Perbandt, Thomas Fricke & Michael Wachendorf. (2010) Off-nadir hyperspectral measurements in maize to predict dry matter yield, protein content and metabolisable energy in total biomass. Precision Agriculture 12:2, pages 249-265.
Crossref
L. Cabrera-Bosquet, G. Molero, A. Stellacci, J. Bort, S. Nogués & J. Araus. (2011) NDVI as a potential tool for predicting biomass, plant nitrogen content and growth in wheat genotypes subjected to different water and nitrogen conditions. Cereal Research Communications 39:1, pages 147-159.
Crossref
Lênio Soares Galvão, Dar A. Roberts, Antônio Roberto Formaggio, Izaya Numata & Fábio Marcelo Breunig. (2009) View angle effects on the discrimination of soybean varieties and on the relationships between vegetation indices and yield using off-nadir Hyperion data. Remote Sensing of Environment 113:4, pages 846-856.
Crossref
Nicolas Tremblay, Zhijie Wang, Bao-Luo Ma, Carl Belec & Philippe Vigneault. (2008) A comparison of crop data measured by two commercial sensors for variable-rate nitrogen application. Precision Agriculture 10:2, pages 145-161.
Crossref
T. Behrens, J. Müller & W. Diepenbrock. (2007) Optimizing a Diode Array VIS/NIR Spectrometer System to Detect Plant Stress in the Field. Journal of Agronomy and Crop Science 193:4, pages 292-304.
Crossref
J.P. Ferrio, D. Villegas, J. Zarco, N. Aparicio, J.L. Araus & C. Royo. (2005) Assessment of durum wheat yield using visible and near-infrared reflectance spectra of canopies. Field Crops Research 94:2-3, pages 126-148.
Crossref

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.