Register      Login
Functional Plant Biology Functional Plant Biology Society
Plant function and evolutionary biology

Articles citing this paper

Can changes in leaf water potential be assessed spectrally?

Salah Elsayed A B , Bodo Mistele A and Urs Schmidhalter A C
+ Author Affiliations
- Author Affiliations

A Department of Plant Sciences, Technische Universität München, Emil-Ramann-Str. 2, D-85350 Freising-Weihenstephan, Germany.

B Branch of Agricultural Engineering, Evaluation of Natural Resources Department, Environmental Studies and Research Institute, Minufiya University, Sadat City, Egypt.

C Corresponding author. Email: schmidhalter@wzw.tum.de

Functional Plant Biology 38(6) 523-533 https://doi.org/10.1071/FP11021
Submitted: 16 January 2011  Accepted: 19 April 2011   Published: 3 June 2011



52 articles found in Crossref database.

Potential of the existing and novel spectral reflectance indices for estimating the leaf water status and grain yield of spring wheat exposed to different irrigation rates
El-Hendawy Salah E., Al-Suhaibani Nasser A., Elsayed Salah, Hassan Wael M., Dewir Yaser Hassan, Refay Yahya, Abdella Kamel A.
Agricultural Water Management. 2019 217 p.356
Physiological assessment of water deficit in soybean using midday leaf water potential and spectral features
Wijewardana Chathurika, Alsajri Firas A., Irby J. Trenton, Krutz L. Jason, Golden Bobby, Henry W. Brien, Gao Wei, Reddy K. Raja
Journal of Plant Interactions. 2019 14(1). p.533
Evaluation of Five Methods to Measure Normalized Difference Vegetation Index (NDVI) in Apple and Citrus
Glenn David Michael, Tabb Amy
International Journal of Fruit Science. 2019 19(2). p.191
Thermal imaging and passive reflectance sensing to estimate the water status and grain yield of wheat under different irrigation regimes
Elsayed Salah, Elhoweity Mohamed, Ibrahim Hazem H., Dewir Yaser Hassan, Migdadi Hussein M., Schmidhalter Urs
Agricultural Water Management. 2017 189 p.98
Evaluation of Point Hyperspectral Reflectance and Multivariate Regression Models for Grapevine Water Status Estimation
Wei Hsiang-En, Grafton Miles, Bretherton Michael, Irwin Matthew, Sandoval Eduardo
Remote Sensing. 2021 13(16). p.3198
Chickpea leaf water potential estimation from ground and VENµS satellite
Sadeh Roy, Avneri Asaf, Tubul Yaniv, Lati Ran N., Bonfil David J., Peleg Zvi, Herrmann Ittai
Precision Agriculture. 2024
Detecting crop water status in mature olive groves using vegetation spectral measurements
Rallo Giovanni, Minacapilli Mario, Ciraolo Giuseppe, Provenzano Giuseppe
Biosystems Engineering. 2014 128 p.52
Satellite-based Applications on Climate Change (2013)
Hunt E. Raymond, Ustin Susan L., Riaño David
Advances in Plant Ecophysiology Techniques (2018)
Erice Gorka, Pérez-Bueno María Luisa, Pineda Mónica, Barón Matilde, Aroca Ricardo, Calvo-Polanco Mónica
Digital Agriculture (2024)
Kumari Priya, Gangwar Himanshi, Kumar Vishal, Jaiswal Vandana, Gahlaut Vijay
Differential stress tolerance of four pines (Pinaceae) across the elevation gradient of the San Bernardino Mountains, Southern California, USA1
Poulos Helen M., Berlyn Graeme P., Mills Sara A.
The Journal of the Torrey Botanical Society. 2012 139(1). p.96
Deciphering novel QTL for spectral reflectance indices in spring wheat
Barakat Mohamed, Al-Doss Abdullah, El-Hendawy Salah, Al-Suhaibani Nasser, Abdella Kamel, Al-Ashkar Ibrahim
Cereal Research Communications. 2021 49(4). p.649
Daytime and seasonal reflectance of maize grown in varying compass directions
Buchhart Claudia, Schmidhalter Urs
Frontiers in Plant Science. 2022 13
First Insights on Soil Respiration Prediction across the Growth Stages of Rainfed Barley Based on Simulated MODIS and Sentinel-2 Spectral Indices
Cicuéndez Víctor, Rodríguez-Rastrero Manuel, Recuero Laura, Huesca Margarita, Schmid Thomas, Inclán Rosa, Litago Javier, Sánchez-Girón Víctor, Palacios-Orueta Alicia
Remote Sensing. 2020 12(17). p.2724
Passive reflectance sensing and digital image analysis for assessing quality parameters of mango fruits
Elsayed Salah, Galal Hoda, Allam Aida, Schmidhalter Urs
Scientia Horticulturae. 2016 212 p.136
Non-invasive spectral detection of the beneficial effects of Bradyrhizobium spp. and plant growth-promoting rhizobacteria under different levels of nitrogen application on the biomass, nitrogen status, and yield of peanut cultivars
Elsayed Salah, Elhoweity Mohamed, El-Hendawy Salah, Schmidhalter Urs
Bragantia. 2017 76(2). p.189
Comparative performance of spectral and thermographic properties of plants and physiological traits for phenotyping salinity tolerance of wheat cultivars under simulated field conditions
Hu Yuncai, Hackl Harald, Schmidhalter Urs
Functional Plant Biology. 2017 44(1). p.134
Precision Oliviculture: Research Topics, Challenges, and Opportunities—A Review
Roma Eliseo, Catania Pietro
Remote Sensing. 2022 14(7). p.1668
Optimal vegetation index for assessing leaf water potential using reflectance factors from the adaxial and abaxial surfaces
Wang Zitong, Sun Zhongqiu, Lu Shan
Computers and Electronics in Agriculture. 2020 172 p.105337
The genetic basis of spectral reflectance indices in drought-stressed wheat
Barakat Mohamed, El-Hendawy Salah, Al-Suhaibani Nasser, Elshafei Adel, Al-Doss Abdullah, Al-Ashkar Ibrahim, Ahmed Eid, Al-Gaadi Khaled
Acta Physiologiae Plantarum. 2016 38(9).
Development of a diurnal dehydration index for spring barley phenotyping
Rischbeck Pablo, Baresel Peter, Elsayed Salah, Mistele Bodo, Schmidhalter Urs
Functional Plant Biology. 2014 41(12). p.1249
High Air Humidity Causes Atmospheric Water Absorption via Assimilating Branches in the Deep-Rooted Tree Haloxylon ammodendron in an Arid Desert Region of Northwest China
Gong Xue-Wei, Lü Guang-Hui, He Xue-Min, Sarkar Binoy, Yang Xiao-Dong
Frontiers in Plant Science. 2019 10
Spectral assessments of wheat plants grown in pots and containers under saline conditions
Hackl Harald, Mistele Bodo, Hu Yuncai, Schmidhalter Urs
Functional Plant Biology. 2013 40(4). p.409
Estimating the Leaf Water Status and Grain Yield of Wheat under Different Irrigation Regimes Using Optimized Two- and Three-Band Hyperspectral Indices and Multivariate Regression Models
Elsayed Salah, El-Hendawy Salah, Dewir Yaser Hassan, Schmidhalter Urs, Ibrahim Hazem H., Ibrahim Mohamed M., Elsherbiny Osama, Farouk Mohamed
Water. 2021 13(19). p.2666
Hyperspectral imagery as a supporting tool in precision irrigation of karst landscapes
Zovko M., Žibrat U., Knapič M., Bubalo M., Romić M., Romić D.
Advances in Animal Biosciences. 2017 8(2). p.578
Assessing the Efficiency of Remote Sensing and Machine Learning Algorithms to Quantify Wheat Characteristics in the Nile Delta Region of Egypt
Elmetwalli Adel H., Mazrou Yasser S. A., Tyler Andrew N., Hunter Peter D., Elsherbiny Osama, Yaseen Zaher Mundher, Elsayed Salah
Agriculture. 2022 12(3). p.332
Hyperspectral remote sensing to assess the water status, biomass, and yield of maize cultivars under salinity and water stress
Elsayed Salah, Darwish Waleed
Bragantia. 2017 76(1). p.62
Utilization of a high-throughput shoot imaging system to examine the dynamic phenotypic responses of a C4 cereal crop plant to nitrogen and water deficiency over time
Neilson E. H., Edwards A. M., Blomstedt C. K., Berger B., Møller B. Lindberg, Gleadow R. M.
Journal of Experimental Botany. 2015 66(7). p.1817
Physiological characteristic of 10 sorghums genotypes under water stress in greenhouse
Widiyono W, Rachmat A, Nugroho S, Lestari P, Syarif F
IOP Conference Series: Earth and Environmental Science. 2021 762(1). p.012052
Combining Genetic Analysis and Multivariate Modeling to Evaluate Spectral Reflectance Indices as Indirect Selection Tools in Wheat Breeding under Water Deficit Stress Conditions
El-Hendawy Salah, Al-Suhaibani Nasser, Al-Ashkar Ibrahim, Alotaibi Majed, Tahir Muhammad Usman, Solieman Talaat, Hassan Wael M.
Remote Sensing. 2020 12(9). p.1480
Leaf water potential of field crops estimated using NDVI in ground-based remote sensing—opportunities to increase prediction precision
Dong Xuejun, Peng Bin, Sieckenius Shane, Raman Rahul, Conley Matthew M., Leskovar Daniel I.
PeerJ. 2021 9 p.e12005
Determination of water stress with spectral reflectance on sweet corn (Zea mays L.) using classification tree (CT) analysis
Genc Levent, Inalpulat Melis, Kizil Unal, Mirik Mustafa, Smith Scot E., Mendes Mehmet
Zemdirbyste-Agriculture. 2013 100(1). p.81
Hyperspectral reflectance sensing to assess the growth and photosynthetic properties of wheat cultivars exposed to different irrigation rates in an irrigated arid region
El-Hendawy Salah, Al-Suhaibani Nasser, Hassan Wael, Tahir Mohammad, Schmidhalter Urs, Aroca Ricardo
PLOS ONE. 2017 12(8). p.e0183262
High-throughput phenotyping early plant vigour of winter wheat
Kipp Sebastian, Mistele Bodo, Baresel Peter, Schmidhalter Urs
European Journal of Agronomy. 2014 52 p.271
Spectral vegetation indices selected for quantifying Russian wheat aphid (Diuraphis noxia) feeding damage in wheat (Triticum aestivum L.)
Mirik M., Ansley R. J., Michels G. J., Elliott N. C.
Precision Agriculture. 2012 13(4). p.501
A Review of Imaging Techniques for Plant Phenotyping
Li Lei, Zhang Qin, Huang Danfeng
Sensors. 2014 14(11). p.20078
Lipid peroxidation of cell membranes in the formation and regulation of plant protective reactions
Mamenko T.P., Kots S.Ya.
Ukrainian Botanical Journal. 2020 77(4). p.331
Proximal Remote Sensing Buggies and Potential Applications for Field-Based Phenotyping
Deery David, Jimenez-Berni Jose, Jones Hamlyn, Sirault Xavier, Furbank Robert
Agronomy. 2014 4(3). p.349
The Optical Response of a Mediterranean Shrubland to Climate Change: Hyperspectral Reflectance Measurements during Spring
Mevy Jean-Philippe, Biryol Charlotte, Boiteau-Barral Marine, Miglietta Franco
Plants. 2022 11(4). p.505
Using UAV-based thermal imagery to detect crop water status variability in cotton
Lacerda Lorena N., Snider John L., Cohen Yafit, Liakos Vasileios, Gobbo Stefano, Vellidis George
Smart Agricultural Technology. 2022 2 p.100029
Vibrational Spectroscopy for Plant Varieties and Cultivars Characterization (2018)
Roberts Jessica J., Power Aoife, Chapman James, Chandra Shaneel, Cozzolino Daniel
Assessing gas exchange, sap flow and water relations using tree canopy spectral reflectance indices in irrigated and rainfed Olea europaea L.
Marino Giovanni, Pallozzi Emanuele, Cocozza Claudia, Tognetti Roberto, Giovannelli Alessio, Cantini Claudio, Centritto Mauro
Environmental and Experimental Botany. 2014 99 p.43
Passive Reflectance Sensing and Digital Image Analysis Allows for Assessing the Biomass and Nitrogen Status of Wheat in Early and Late Tillering Stages
Elsayed Salah, Barmeier Gero, Schmidhalter Urs
Frontiers in Plant Science. 2018 9
Not a load of rubbish: simulated field trials in large‐scale containers
Hohmann M., Stahl A., Rudloff J., Wittkop B., Snowdon R. J.
Plant, Cell & Environment. 2016 39(9). p.2064
Detection and Evaluation of Environmental Stress in Winter Wheat Using Remote and Proximal Sensing Methods and Vegetation Indices—A Review
Skendžić Sandra, Zovko Monika, Lešić Vinko, Pajač Živković Ivana, Lemić Darija
Diversity. 2023 15(4). p.481
Effect of dehydration on spectral reflectance and photosynthetic efficiency in Umbilicaria arctica and U. hyperborea
Barták M., Trnková K., Hansen E. S., Hazdrová J., Skácelová K., Hájek J., Forbelská M.
Biologia plantarum. 2015 59(2). p.357
Comparing the performance of active and passive reflectance sensors to assess the normalized relative canopy temperature and grain yield of drought-stressed barley cultivars
Elsayed Salah, Rischbeck Pablo, Schmidhalter Urs
Field Crops Research. 2015 177 p.148
Future Scenarios for Plant Phenotyping
Fiorani Fabio, Schurr Ulrich
Annual Review of Plant Biology. 2013 64(1). p.267
The role of near-infrared sensors to measure water relationships in crops and plants
Cozzolino Daniel
Applied Spectroscopy Reviews. 2017 52(10). p.837
Soybean Improvement (2022)
Satpute Gyanesh Kumar, Shroti Ruchi, Shesh Nishtha, Kamble Viraj G., Kavishwar Rucha, Ratnaparkhe Milind B., Srivastava Manoj Kumar, Chandra Subhash, Gupta Sanjay, Kumawat Giriraj, Verma Rakesh Kumar, Pandey Sanjay Kumar, Rajput Laxman Singh, Kuchlan Mrinal K., Kuchlan Punam, Meena Lokesh, Raghvendra M.
Non-destructive analysis of plant physiological traits using hyperspectral imaging: A case study on drought stress
Mohd Asaari Mohd Shahrimie, Mertens Stien, Verbraeken Lennart, Dhondt Stijn, Inzé Dirk, Bikram Koirala, Scheunders Paul
Computers and Electronics in Agriculture. 2022 195 p.106806
Hyperspectral remote sensing of grapevine drought stress
Zovko M., Žibrat U., Knapič M., Kovačić M. Bubalo, Romić D.
Precision Agriculture. 2019 20(2). p.335

Committee on Publication Ethics


Abstract Export Citation Get Permission