Limitations of snapshot hyperspectral cameras to monitor plant response dynamics in stress-free conditions

[1]  J. A. Schell,et al.  Monitoring vegetation systems in the great plains with ERTS , 1973 .

[2]  C. Field,et al.  A narrow-waveband spectral index that tracks diurnal changes in photosynthetic efficiency , 1992 .

[3]  D. M. Moss,et al.  Red edge spectral measurements from sugar maple leaves , 1993 .

[4]  A. Gitelson,et al.  Spectral reflectance changes associated with autumn senescence of Aesculus hippocastanum L. and Acer platanoides L. leaves. Spectral features and relation to chlorophyll estimation , 1994 .

[5]  Antonio Marcilla,et al.  Infrared spectral changes in PVC and plasticized PVC during gelation and fusion , 1997 .

[6]  W. E. Larson,et al.  Coincident detection of crop water stress, nitrogen status and canopy density using ground-based multispectral data. , 2000 .

[7]  Carter,et al.  Effects of elevated atmospheric CO(2) and temperature on leaf optical properties in Acer saccharum. , 2000, Environmental and experimental botany.

[8]  D. Sims,et al.  Relationships between leaf pigment content and spectral reflectance across a wide range of species, leaf structures and developmental stages , 2002 .

[9]  Manfred Stoll,et al.  Use of infrared thermography for monitoring stomatal closure in the field: application to grapevine. , 2002, Journal of experimental botany.

[10]  H. Jones Irrigation scheduling: advantages and pitfalls of plant-based methods. , 2004, Journal of experimental botany.

[11]  Vijaya Gopal Kakani,et al.  Nitrogen deficiency effects on plant growth, leaf photosynthesis, and hyperspectral reflectance properties of sorghum , 2005 .

[12]  U. Rascher,et al.  Functional dynamics of plant growth and photosynthesis--from steady-state to dynamics--from homogeneity to heterogeneity. , 2006, Plant, cell & environment.

[13]  N. Baker Chlorophyll fluorescence: a probe of photosynthesis in vivo. , 2008, Annual review of plant biology.

[14]  Michel Dagenais,et al.  Internal Clock Drift Estimation in Computer Clusters , 2008, J. Comput. Networks Commun..

[15]  W. S. Lee,et al.  Green citrus detection using hyperspectral imaging , 2009 .

[16]  Wes McKinney,et al.  Data Structures for Statistical Computing in Python , 2010, SciPy.

[17]  Gaël Varoquaux,et al.  Scikit-learn: Machine Learning in Python , 2011, J. Mach. Learn. Res..

[18]  Wes McKinney,et al.  pandas: a Foundational Python Library for Data Analysis and Statistics , 2011 .

[19]  W. Maes,et al.  Estimating evapotranspiration and drought stress with ground-based thermal remote sensing in agriculture: a review. , 2012, Journal of experimental botany.

[20]  David M Kramer,et al.  Improving yield by exploiting mechanisms underlying natural variation of photosynthesis. , 2012, Current opinion in biotechnology.

[21]  P. Zarco-Tejada,et al.  Spatio-temporal patterns of chlorophyll fluorescence and physiological and structural indices acquired from hyperspectral imagery as compared with carbon fluxes measured with eddy covariance , 2013 .

[22]  E H Murchie,et al.  Chlorophyll fluorescence analysis: a guide to good practice and understanding some new applications. , 2013, Journal of experimental botany.

[23]  P. Zarco-Tejada,et al.  Relationships between net photosynthesis and steady-state chlorophyll fluorescence retrieved from airborne hyperspectral imagery , 2013 .

[24]  T. Lawson,et al.  Stomatal Size, Speed, and Responsiveness Impact on Photosynthesis and Water Use Efficiency1[C] , 2014, Plant Physiology.

[25]  L. Plümer,et al.  Detection of early plant stress responses in hyperspectral images , 2014 .

[26]  A. Karnieli,et al.  Combining leaf physiology, hyperspectral imaging and partial least squares-regression (PLS-R) for grapevine water status assessment , 2015 .

[27]  Stephen P. Long,et al.  Improving photosynthesis and crop productivity by accelerating recovery from photoprotection , 2016, Science.

[28]  Anne-Katrin Mahlein Plant Disease Detection by Imaging Sensors - Parallels and Specific Demands for Precision Agriculture and Plant Phenotyping. , 2016, Plant disease.

[29]  Tracy Lawson,et al.  Effects of kinetics of light‐induced stomatal responses on photosynthesis and water‐use efficiency , 2016, The New phytologist.

[30]  Christian Bauckhage,et al.  Plant Phenotyping using Probabilistic Topic Models: Uncovering the Hyperspectral Language of Plants , 2016, Scientific Reports.

[31]  Quan Wang,et al.  Hyperspectral indices based on first derivative spectra closely trace canopy transpiration in a desert plant , 2016, Ecol. Informatics.

[32]  A. Leakey,et al.  High-Throughput Phenotyping of Maize Leaf Physiological and Biochemical Traits Using Hyperspectral Reflectance1[OPEN] , 2016, Plant Physiology.

[33]  Andrew P French,et al.  Hyperspectral image analysis techniques for the detection and classification of the early onset of plant disease and stress , 2017, Plant Methods.

[34]  J. Harbinson,et al.  Fluctuating Light Takes Crop Photosynthesis on a Rollercoaster Ride1[OPEN] , 2017, Plant Physiology.

[35]  Tracy Lawson,et al.  Importance of Fluctuations in Light on Plant Photosynthetic Acclimation1[CC-BY] , 2017, Plant Physiology.

[36]  Renata Retkute,et al.  Suboptimal Acclimation of Photosynthesis to Light in Wheat Canopies[CC-BY] , 2017, Plant Physiology.

[37]  Luis Alonso,et al.  Diurnal Cycle Relationships between Passive Fluorescence, PRI and NPQ of Vegetation in a Controlled Stress Experiment , 2017, Remote. Sens..

[38]  Yong He,et al.  Recognising weeds in a maize crop using a random forest machine-learning algorithm and near-infrared snapshot mosaic hyperspectral imagery , 2018, Biosystems Engineering.

[39]  Tracy Lawson,et al.  Acclimation to Fluctuating Light Impacts the Rapidity of Response and Diurnal Rhythm of Stomatal Conductance1[CC-BY] , 2018, Plant Physiology.

[40]  Shawn P Serbin,et al.  Hyperspectral reflectance as a tool to measure biochemical and physiological traits in wheat , 2017, Journal of experimental botany.

[41]  Uwe Rascher,et al.  Measuring the dynamic photosynthome , 2018, Annals of botany.

[42]  Hamid Saeed Khan,et al.  Modern Trends in Hyperspectral Image Analysis: A Review , 2018, IEEE Access.

[43]  Chris Brien,et al.  The Development of Hyperspectral Distribution Maps to Predict the Content and Distribution of Nitrogen and Water in Wheat (Triticum aestivum) , 2019, Front. Plant Sci..

[44]  Marston Héracles Domingues Franceschini,et al.  Feasibility of Unmanned Aerial Vehicle Optical Imagery for Early Detection and Severity Assessment of Late Blight in Potato , 2019, Remote. Sens..

[45]  R R Mir,et al.  High-throughput phenotyping for crop improvement in the genomics era. , 2019, Plant science : an international journal of experimental plant biology.

[46]  Stefania De Pascale,et al.  Vapour pressure deficit: The hidden driver behind plant morphofunctional traits in controlled environments , 2019, Annals of Applied Biology.

[47]  Michelle Watt,et al.  Dynamics in plant roots and shoots minimise stress, save energy and maintain water and nutrient uptake. , 2020, The New phytologist.

[48]  Erik H. Murchie,et al.  Dynamic non-photochemical quenching in plants: from molecular mechanism to productivity. , 2020, The Plant journal : for cell and molecular biology.

[49]  Wataru Yamori,et al.  Whole Irradiated Plant Leaves Showed Faster Photosynthetic Induction Than Individually Irradiated Leaves via Improved Stomatal Opening , 2019, Front. Plant Sci..

[50]  Richard Trethowan,et al.  Rate of photosynthetic induction in fluctuating light varies widely among genotypes of wheat , 2019, Journal of experimental botany.

[51]  Subhajit Bandopadhyay,et al.  Review of Top-of-Canopy Sun-Induced Fluorescence (SIF) Studies from Ground, UAV, Airborne to Spaceborne Observations , 2020, Sensors.

[52]  Offer Rozenstein,et al.  A Hyperspectral-Physiological Phenomics System: Measuring Diurnal Transpiration Rates and Diurnal Reflectance , 2020, Remote. Sens..

[53]  Ben Somers,et al.  In-field detection of Alternaria solani in potato crops using hyperspectral imaging , 2020, Comput. Electron. Agric..

[54]  Ben Somers,et al.  Closing the Phenotyping Gap: High Resolution UAV Time Series for Soybean Growth Analysis Provides Objective Data from Field Trials , 2020, Remote. Sens..