Completing the picture of field-grown cereal crops: a new method for detailed leaf surface models in wheat

Background The leaf angle distribution (LAD) is an important structural parameter of agricultural crops that influences light interception, radiation fluxes and consequently plant performance. Therefore, LAD and its parametrized form, the Beta distribution, is used in many photosynthesis models. How...

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Published inPlant methods Vol. 20; no. 1; p. 21
Main Authors Theiß, Marie, Steier, Angelina, Rascher, Uwe, Müller-Linow, Mark
Format Journal Article
LanguageEnglish
Published London BioMed Central 03.02.2024
BioMed Central Ltd
BMC
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Online AccessGet full text
ISSN1746-4811
1746-4811
DOI10.1186/s13007-023-01130-x

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Abstract Background The leaf angle distribution (LAD) is an important structural parameter of agricultural crops that influences light interception, radiation fluxes and consequently plant performance. Therefore, LAD and its parametrized form, the Beta distribution, is used in many photosynthesis models. However, in field cultivations, these parameters are difficult to assess and cereal crops in particular pose challenges since their leaves are thin, flexible, and often bent and twisted around their own axis. To our knowledge, there is only a very limited set of methods currently available to calculate LADs of field-grown cereal crops that explicitly takes these special morphological properties into account. Results In this study, a new processing pipeline is introduced that allows for the generation of realistic leaf surface models and the analysis of LADs of field-grown cereal crops from 3D point clouds. The data acquisition is based on a convenient stereo imaging setup. The approach was validated with different artificial targets and results on the accuracy of the 3D reconstruction, leaf surface modeling and calculated LAD are given. The mean error of the 3D reconstruction was below 1 mm for an inclination angle range between 0° and 75° and the leaf surface could be quantified with an average accuracy of 90%. The concordance correlation coefficient (CCC) of 99.6% (p-value =  1.5 ∗ 10 - 29 ) indicated a high correlation between the reconstructed inclination angle and the identity line. The LADs for bent leaves were reconstructed with a mean error of 0.21° and a standard deviation of 1.55°. As an additional parameter, the insertion angle was reconstructed for the artificial leaf model with an average error < 5°. Finally, the method was tested with images of field-grown cereal crops and Beta functions were approximated from the calculated LADs. The mean CCC between reconstructed LAD and calculated Beta function was 0.66. According to Cohen, this indicates a high correlation. Conclusion This study shows that our image processing pipeline can reconstruct the complex leaf shape of cereal crops from stereo images. The high accuracy of the approach was demonstrated with several validation experiments including artificial leaf targets. The derived leaf models were used to calculate LADs for artificial leaves and naturally grown cereal crops. This helps to better understand the influence of the canopy structure on light absorption and plant performance and allows for a more precise parametrization of photosynthesis models via the derived Beta distributions.
AbstractList Background The leaf angle distribution (LAD) is an important structural parameter of agricultural crops that influences light interception, radiation fluxes and consequently plant performance. Therefore, LAD and its parametrized form, the Beta distribution, is used in many photosynthesis models. However, in field cultivations, these parameters are difficult to assess and cereal crops in particular pose challenges since their leaves are thin, flexible, and often bent and twisted around their own axis. To our knowledge, there is only a very limited set of methods currently available to calculate LADs of field-grown cereal crops that explicitly takes these special morphological properties into account. Results In this study, a new processing pipeline is introduced that allows for the generation of realistic leaf surface models and the analysis of LADs of field-grown cereal crops from 3D point clouds. The data acquisition is based on a convenient stereo imaging setup. The approach was validated with different artificial targets and results on the accuracy of the 3D reconstruction, leaf surface modeling and calculated LAD are given. The mean error of the 3D reconstruction was below 1 mm for an inclination angle range between 0[degrees] and 75[degrees] and the leaf surface could be quantified with an average accuracy of 90%. The concordance correlation coefficient (CCC) of 99.6% (p-value = [formula omitted]) indicated a high correlation between the reconstructed inclination angle and the identity line. The LADs for bent leaves were reconstructed with a mean error of 0.21[degrees] and a standard deviation of 1.55[degrees]. As an additional parameter, the insertion angle was reconstructed for the artificial leaf model with an average error < 5[degrees]. Finally, the method was tested with images of field-grown cereal crops and Beta functions were approximated from the calculated LADs. The mean CCC between reconstructed LAD and calculated Beta function was 0.66. According to Cohen, this indicates a high correlation. Conclusion This study shows that our image processing pipeline can reconstruct the complex leaf shape of cereal crops from stereo images. The high accuracy of the approach was demonstrated with several validation experiments including artificial leaf targets. The derived leaf models were used to calculate LADs for artificial leaves and naturally grown cereal crops. This helps to better understand the influence of the canopy structure on light absorption and plant performance and allows for a more precise parametrization of photosynthesis models via the derived Beta distributions. Keywords: Leaf angle distribution, Beta distribution, Plant phenotyping, Cereal crops, Stereo imaging, 3D plant reconstruction, Structural leaf model, Leaf angle
The leaf angle distribution (LAD) is an important structural parameter of agricultural crops that influences light interception, radiation fluxes and consequently plant performance. Therefore, LAD and its parametrized form, the Beta distribution, is used in many photosynthesis models. However, in field cultivations, these parameters are difficult to assess and cereal crops in particular pose challenges since their leaves are thin, flexible, and often bent and twisted around their own axis. To our knowledge, there is only a very limited set of methods currently available to calculate LADs of field-grown cereal crops that explicitly takes these special morphological properties into account. In this study, a new processing pipeline is introduced that allows for the generation of realistic leaf surface models and the analysis of LADs of field-grown cereal crops from 3D point clouds. The data acquisition is based on a convenient stereo imaging setup. The approach was validated with different artificial targets and results on the accuracy of the 3D reconstruction, leaf surface modeling and calculated LAD are given. The mean error of the 3D reconstruction was below 1 mm for an inclination angle range between 0[degrees] and 75[degrees] and the leaf surface could be quantified with an average accuracy of 90%. The concordance correlation coefficient (CCC) of 99.6% (p-value = [formula omitted]) indicated a high correlation between the reconstructed inclination angle and the identity line. The LADs for bent leaves were reconstructed with a mean error of 0.21[degrees] and a standard deviation of 1.55[degrees]. As an additional parameter, the insertion angle was reconstructed for the artificial leaf model with an average error < 5[degrees]. Finally, the method was tested with images of field-grown cereal crops and Beta functions were approximated from the calculated LADs. The mean CCC between reconstructed LAD and calculated Beta function was 0.66. According to Cohen, this indicates a high correlation. This study shows that our image processing pipeline can reconstruct the complex leaf shape of cereal crops from stereo images. The high accuracy of the approach was demonstrated with several validation experiments including artificial leaf targets. The derived leaf models were used to calculate LADs for artificial leaves and naturally grown cereal crops. This helps to better understand the influence of the canopy structure on light absorption and plant performance and allows for a more precise parametrization of photosynthesis models via the derived Beta distributions.
The leaf angle distribution (LAD) is an important structural parameter of agricultural crops that influences light interception, radiation fluxes and consequently plant performance. Therefore, LAD and its parametrized form, the Beta distribution, is used in many photosynthesis models. However, in field cultivations, these parameters are difficult to assess and cereal crops in particular pose challenges since their leaves are thin, flexible, and often bent and twisted around their own axis. To our knowledge, there is only a very limited set of methods currently available to calculate LADs of field-grown cereal crops that explicitly takes these special morphological properties into account.BACKGROUNDThe leaf angle distribution (LAD) is an important structural parameter of agricultural crops that influences light interception, radiation fluxes and consequently plant performance. Therefore, LAD and its parametrized form, the Beta distribution, is used in many photosynthesis models. However, in field cultivations, these parameters are difficult to assess and cereal crops in particular pose challenges since their leaves are thin, flexible, and often bent and twisted around their own axis. To our knowledge, there is only a very limited set of methods currently available to calculate LADs of field-grown cereal crops that explicitly takes these special morphological properties into account.In this study, a new processing pipeline is introduced that allows for the generation of realistic leaf surface models and the analysis of LADs of field-grown cereal crops from 3D point clouds. The data acquisition is based on a convenient stereo imaging setup. The approach was validated with different artificial targets and results on the accuracy of the 3D reconstruction, leaf surface modeling and calculated LAD are given. The mean error of the 3D reconstruction was below 1 mm for an inclination angle range between 0° and 75° and the leaf surface could be quantified with an average accuracy of 90%. The concordance correlation coefficient (CCC) of 99.6% (p-value = [Formula: see text]) indicated a high correlation between the reconstructed inclination angle and the identity line. The LADs for bent leaves were reconstructed with a mean error of 0.21° and a standard deviation of 1.55°. As an additional parameter, the insertion angle was reconstructed for the artificial leaf model with an average error < 5°. Finally, the method was tested with images of field-grown cereal crops and Beta functions were approximated from the calculated LADs. The mean CCC between reconstructed LAD and calculated Beta function was 0.66. According to Cohen, this indicates a high correlation.RESULTSIn this study, a new processing pipeline is introduced that allows for the generation of realistic leaf surface models and the analysis of LADs of field-grown cereal crops from 3D point clouds. The data acquisition is based on a convenient stereo imaging setup. The approach was validated with different artificial targets and results on the accuracy of the 3D reconstruction, leaf surface modeling and calculated LAD are given. The mean error of the 3D reconstruction was below 1 mm for an inclination angle range between 0° and 75° and the leaf surface could be quantified with an average accuracy of 90%. The concordance correlation coefficient (CCC) of 99.6% (p-value = [Formula: see text]) indicated a high correlation between the reconstructed inclination angle and the identity line. The LADs for bent leaves were reconstructed with a mean error of 0.21° and a standard deviation of 1.55°. As an additional parameter, the insertion angle was reconstructed for the artificial leaf model with an average error < 5°. Finally, the method was tested with images of field-grown cereal crops and Beta functions were approximated from the calculated LADs. The mean CCC between reconstructed LAD and calculated Beta function was 0.66. According to Cohen, this indicates a high correlation.This study shows that our image processing pipeline can reconstruct the complex leaf shape of cereal crops from stereo images. The high accuracy of the approach was demonstrated with several validation experiments including artificial leaf targets. The derived leaf models were used to calculate LADs for artificial leaves and naturally grown cereal crops. This helps to better understand the influence of the canopy structure on light absorption and plant performance and allows for a more precise parametrization of photosynthesis models via the derived Beta distributions.CONCLUSIONThis study shows that our image processing pipeline can reconstruct the complex leaf shape of cereal crops from stereo images. The high accuracy of the approach was demonstrated with several validation experiments including artificial leaf targets. The derived leaf models were used to calculate LADs for artificial leaves and naturally grown cereal crops. This helps to better understand the influence of the canopy structure on light absorption and plant performance and allows for a more precise parametrization of photosynthesis models via the derived Beta distributions.
The leaf angle distribution (LAD) is an important structural parameter of agricultural crops that influences light interception, radiation fluxes and consequently plant performance. Therefore, LAD and its parametrized form, the Beta distribution, is used in many photosynthesis models. However, in field cultivations, these parameters are difficult to assess and cereal crops in particular pose challenges since their leaves are thin, flexible, and often bent and twisted around their own axis. To our knowledge, there is only a very limited set of methods currently available to calculate LADs of field-grown cereal crops that explicitly takes these special morphological properties into account. In this study, a new processing pipeline is introduced that allows for the generation of realistic leaf surface models and the analysis of LADs of field-grown cereal crops from 3D point clouds. The data acquisition is based on a convenient stereo imaging setup. The approach was validated with different artificial targets and results on the accuracy of the 3D reconstruction, leaf surface modeling and calculated LAD are given. The mean error of the 3D reconstruction was below 1 mm for an inclination angle range between 0° and 75° and the leaf surface could be quantified with an average accuracy of 90%. The concordance correlation coefficient (CCC) of 99.6% (p-value = [Formula: see text]) indicated a high correlation between the reconstructed inclination angle and the identity line. The LADs for bent leaves were reconstructed with a mean error of 0.21° and a standard deviation of 1.55°. As an additional parameter, the insertion angle was reconstructed for the artificial leaf model with an average error < 5°. Finally, the method was tested with images of field-grown cereal crops and Beta functions were approximated from the calculated LADs. The mean CCC between reconstructed LAD and calculated Beta function was 0.66. According to Cohen, this indicates a high correlation. This study shows that our image processing pipeline can reconstruct the complex leaf shape of cereal crops from stereo images. The high accuracy of the approach was demonstrated with several validation experiments including artificial leaf targets. The derived leaf models were used to calculate LADs for artificial leaves and naturally grown cereal crops. This helps to better understand the influence of the canopy structure on light absorption and plant performance and allows for a more precise parametrization of photosynthesis models via the derived Beta distributions.
BACKGROUND: The leaf angle distribution (LAD) is an important structural parameter of agricultural crops that influences light interception, radiation fluxes and consequently plant performance. Therefore, LAD and its parametrized form, the Beta distribution, is used in many photosynthesis models. However, in field cultivations, these parameters are difficult to assess and cereal crops in particular pose challenges since their leaves are thin, flexible, and often bent and twisted around their own axis. To our knowledge, there is only a very limited set of methods currently available to calculate LADs of field-grown cereal crops that explicitly takes these special morphological properties into account. RESULTS: In this study, a new processing pipeline is introduced that allows for the generation of realistic leaf surface models and the analysis of LADs of field-grown cereal crops from 3D point clouds. The data acquisition is based on a convenient stereo imaging setup. The approach was validated with different artificial targets and results on the accuracy of the 3D reconstruction, leaf surface modeling and calculated LAD are given. The mean error of the 3D reconstruction was below 1 mm for an inclination angle range between 0° and 75° and the leaf surface could be quantified with an average accuracy of 90%. The concordance correlation coefficient (CCC) of 99.6% (p-value = 1.5∗10-29) indicated a high correlation between the reconstructed inclination angle and the identity line. The LADs for bent leaves were reconstructed with a mean error of 0.21° and a standard deviation of 1.55°. As an additional parameter, the insertion angle was reconstructed for the artificial leaf model with an average error < 5°. Finally, the method was tested with images of field-grown cereal crops and Beta functions were approximated from the calculated LADs. The mean CCC between reconstructed LAD and calculated Beta function was 0.66. According to Cohen, this indicates a high correlation. CONCLUSION: This study shows that our image processing pipeline can reconstruct the complex leaf shape of cereal crops from stereo images. The high accuracy of the approach was demonstrated with several validation experiments including artificial leaf targets. The derived leaf models were used to calculate LADs for artificial leaves and naturally grown cereal crops. This helps to better understand the influence of the canopy structure on light absorption and plant performance and allows for a more precise parametrization of photosynthesis models via the derived Beta distributions.
Background The leaf angle distribution (LAD) is an important structural parameter of agricultural crops that influences light interception, radiation fluxes and consequently plant performance. Therefore, LAD and its parametrized form, the Beta distribution, is used in many photosynthesis models. However, in field cultivations, these parameters are difficult to assess and cereal crops in particular pose challenges since their leaves are thin, flexible, and often bent and twisted around their own axis. To our knowledge, there is only a very limited set of methods currently available to calculate LADs of field-grown cereal crops that explicitly takes these special morphological properties into account. Results In this study, a new processing pipeline is introduced that allows for the generation of realistic leaf surface models and the analysis of LADs of field-grown cereal crops from 3D point clouds. The data acquisition is based on a convenient stereo imaging setup. The approach was validated with different artificial targets and results on the accuracy of the 3D reconstruction, leaf surface modeling and calculated LAD are given. The mean error of the 3D reconstruction was below 1 mm for an inclination angle range between 0° and 75° and the leaf surface could be quantified with an average accuracy of 90%. The concordance correlation coefficient (CCC) of 99.6% (p-value =  1.5 ∗ 10 - 29 ) indicated a high correlation between the reconstructed inclination angle and the identity line. The LADs for bent leaves were reconstructed with a mean error of 0.21° and a standard deviation of 1.55°. As an additional parameter, the insertion angle was reconstructed for the artificial leaf model with an average error < 5°. Finally, the method was tested with images of field-grown cereal crops and Beta functions were approximated from the calculated LADs. The mean CCC between reconstructed LAD and calculated Beta function was 0.66. According to Cohen, this indicates a high correlation. Conclusion This study shows that our image processing pipeline can reconstruct the complex leaf shape of cereal crops from stereo images. The high accuracy of the approach was demonstrated with several validation experiments including artificial leaf targets. The derived leaf models were used to calculate LADs for artificial leaves and naturally grown cereal crops. This helps to better understand the influence of the canopy structure on light absorption and plant performance and allows for a more precise parametrization of photosynthesis models via the derived Beta distributions.
Abstract Background The leaf angle distribution (LAD) is an important structural parameter of agricultural crops that influences light interception, radiation fluxes and consequently plant performance. Therefore, LAD and its parametrized form, the Beta distribution, is used in many photosynthesis models. However, in field cultivations, these parameters are difficult to assess and cereal crops in particular pose challenges since their leaves are thin, flexible, and often bent and twisted around their own axis. To our knowledge, there is only a very limited set of methods currently available to calculate LADs of field-grown cereal crops that explicitly takes these special morphological properties into account. Results In this study, a new processing pipeline is introduced that allows for the generation of realistic leaf surface models and the analysis of LADs of field-grown cereal crops from 3D point clouds. The data acquisition is based on a convenient stereo imaging setup. The approach was validated with different artificial targets and results on the accuracy of the 3D reconstruction, leaf surface modeling and calculated LAD are given. The mean error of the 3D reconstruction was below 1 mm for an inclination angle range between 0° and 75° and the leaf surface could be quantified with an average accuracy of 90%. The concordance correlation coefficient (CCC) of 99.6% (p-value =  $$1.5* {10}^{-29}$$ 1.5 ∗ 10 - 29 ) indicated a high correlation between the reconstructed inclination angle and the identity line. The LADs for bent leaves were reconstructed with a mean error of 0.21° and a standard deviation of 1.55°. As an additional parameter, the insertion angle was reconstructed for the artificial leaf model with an average error < 5°. Finally, the method was tested with images of field-grown cereal crops and Beta functions were approximated from the calculated LADs. The mean CCC between reconstructed LAD and calculated Beta function was 0.66. According to Cohen, this indicates a high correlation. Conclusion This study shows that our image processing pipeline can reconstruct the complex leaf shape of cereal crops from stereo images. The high accuracy of the approach was demonstrated with several validation experiments including artificial leaf targets. The derived leaf models were used to calculate LADs for artificial leaves and naturally grown cereal crops. This helps to better understand the influence of the canopy structure on light absorption and plant performance and allows for a more precise parametrization of photosynthesis models via the derived Beta distributions.
BackgroundThe leaf angle distribution (LAD) is an important structural parameter of agricultural crops that influences light interception, radiation fluxes and consequently plant performance. Therefore, LAD and its parametrized form, the Beta distribution, is used in many photosynthesis models. However, in field cultivations, these parameters are difficult to assess and cereal crops in particular pose challenges since their leaves are thin, flexible, and often bent and twisted around their own axis. To our knowledge, there is only a very limited set of methods currently available to calculate LADs of field-grown cereal crops that explicitly takes these special morphological properties into account.ResultsIn this study, a new processing pipeline is introduced that allows for the generation of realistic leaf surface models and the analysis of LADs of field-grown cereal crops from 3D point clouds. The data acquisition is based on a convenient stereo imaging setup. The approach was validated with different artificial targets and results on the accuracy of the 3D reconstruction, leaf surface modeling and calculated LAD are given. The mean error of the 3D reconstruction was below 1 mm for an inclination angle range between 0° and 75° and the leaf surface could be quantified with an average accuracy of 90%. The concordance correlation coefficient (CCC) of 99.6% (p-value = \(1.5* {10}^{-29}\)) indicated a high correlation between the reconstructed inclination angle and the identity line. The LADs for bent leaves were reconstructed with a mean error of 0.21° and a standard deviation of 1.55°. As an additional parameter, the insertion angle was reconstructed for the artificial leaf model with an average error < 5°. Finally, the method was tested with images of field-grown cereal crops and Beta functions were approximated from the calculated LADs. The mean CCC between reconstructed LAD and calculated Beta function was 0.66. According to Cohen, this indicates a high correlation.ConclusionThis study shows that our image processing pipeline can reconstruct the complex leaf shape of cereal crops from stereo images. The high accuracy of the approach was demonstrated with several validation experiments including artificial leaf targets. The derived leaf models were used to calculate LADs for artificial leaves and naturally grown cereal crops. This helps to better understand the influence of the canopy structure on light absorption and plant performance and allows for a more precise parametrization of photosynthesis models via the derived Beta distributions.
ArticleNumber 21
Audience Academic
Author Theiß, Marie
Steier, Angelina
Rascher, Uwe
Müller-Linow, Mark
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  givenname: Angelina
  surname: Steier
  fullname: Steier, Angelina
  organization: Institute of Bio and Geosciences, IBG-2: Plant Sciences, Forschungszentrum Jülich GmbH
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  givenname: Uwe
  surname: Rascher
  fullname: Rascher, Uwe
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  givenname: Mark
  surname: Müller-Linow
  fullname: Müller-Linow, Mark
  email: m.mueller-linow@fz-juelich.de
  organization: Institute of Bio and Geosciences, IBG-2: Plant Sciences, Forschungszentrum Jülich GmbH
BackLink https://www.ncbi.nlm.nih.gov/pubmed/38310295$$D View this record in MEDLINE/PubMed
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CitedBy_id crossref_primary_10_1016_j_compag_2024_109682
Cites_doi 10.1109/TDPVT.2004.1335394
10.1006/anbo.1998.0665
10.1016/j.ecolmodel.2006.07.028
10.1093/aob/mcq181
10.1007/s00468-011-0566-6
10.1109/TPAMI.2007.1166
10.1109/34.888718
10.1007/BF00023715
10.1109/CVPR.2006.294
10.3390/s23094572
10.1117/12.596105
10.1007/s00371-007-0119-6
10.1371/journal.pone.0256340
10.1080/07929978.2016.1243405
10.1016/j.agrformet.2009.08.007
10.1016/j.agrformet.2012.10.011
10.1109/PMA.2009.46
10.2134/agronj1984.00021962007600050021x
10.1080/07352689.2010.502086
10.2478/agri-2021-0005
10.5772/intechopen.91551
10.3390/agriculture10100462
10.1186/s13007-015-0052-z
10.3389/fpls.2020.00096
10.3390/rs11030344
10.2480/agrmet.65.3.6
10.1016/0168-1923(95)02238-S
10.1093/jxb/erq304
10.1016/j.compag.2016.11.022
10.3390/s18103576
10.1046/j.1469-8137.2003.00765.x
10.1109/IC3D.2013.6732085
10.1016/j.agrformet.2013.09.010
10.3390/rs13112232
10.2307/2532051
10.3390/agronomy10111721
10.1201/9781315368252-4
10.5772/54528
10.1016/j.agrformet.2006.12.003
10.1007/s10514-021-09998-1
10.1137/S1064827595289108
10.1109/34.677269
10.1104/pp.17.01213
10.3389/fpls.2019.00999
10.3389/fpls.2022.844522
10.4324/9780203771587
10.1109/IJCNN55064.2022.9892024
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Issue 1
Keywords Cereal crops
Leaf angle
Beta distribution
Leaf angle distribution
3D plant reconstruction
Stereo imaging
Structural leaf model
Plant phenotyping
Language English
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References 1130_CR13
RA Rosu (1130_CR26) 2021
F Hosoi (1130_CR19) 2009; 65
1130_CR17
W-M Wang (1130_CR41) 2007; 143
Z Zhang (1130_CR45) 2000; 22
1130_CR15
H Lambers (1130_CR3) 1989
D Schunck (1130_CR37) 2021; 16
K Itakura (1130_CR33) 2018
J Wang (1130_CR38) 2020; 10
A Paturkar (1130_CR25) 2021; 13
LI Lin (1130_CR30) 1989; 45
K Itakura (1130_CR34) 2019; 11
MP Cendrero-Mateo (1130_CR53) 2017
T Dornbusch (1130_CR12) 2011; 107
T Dornbusch (1130_CR28) 2007; 23
T Dornbusch (1130_CR29) 2007; 200
J Pisek (1130_CR22) 2011; 25
1130_CR50
DE Leihner (1130_CR1) 1978; 27
H Sinoquet (1130_CR18) 1998; 82
RC Gonzalez (1130_CR49) 2018
1130_CR27
J Cohen (1130_CR31) 2013
M Müller-Linow (1130_CR23) 2015
S Birchfield (1130_CR48) 1998; 20
H Hirschmüller (1130_CR47) 2008; 30
H Li (1130_CR39) 2023; 23
M Van Zanten (1130_CR9) 2010; 29
K Yang (1130_CR44) 2020; 10
1130_CR36
M Havrlentová (1130_CR16) 2021; 67
J Pisek (1130_CR21) 2013; 169
X Fan (1130_CR43) 2022; 13
Y Ryu (1130_CR20) 2010; 150
L Maphosa (1130_CR42) 2016
DS Falster (1130_CR5) 2003; 158
AL Kaczmarek (1130_CR35) 2017; 135
R Klein (1130_CR51) 2005
X Zou (1130_CR4) 2014; 184
1130_CR46
G Sassenrathcole (1130_CR2) 1995; 77
1130_CR7
1130_CR6
M Abichou (1130_CR8) 2019; 10
DG Altman (1130_CR32) 1999
MA Branch (1130_CR52) 1999; 21
AJ Townsend (1130_CR11) 2018; 176
NS Goel (1130_CR14) 1984; 76
MAJ Parry (1130_CR10) 2011; 62
S Dandrifosse (1130_CR24) 2020; 11
1130_CR40
References_xml – ident: 1130_CR40
  doi: 10.1109/TDPVT.2004.1335394
– volume: 82
  start-page: 203
  year: 1998
  ident: 1130_CR18
  publication-title: Ann Bot
  doi: 10.1006/anbo.1998.0665
– volume: 200
  start-page: 119
  year: 2007
  ident: 1130_CR29
  publication-title: Ecol Model
  doi: 10.1016/j.ecolmodel.2006.07.028
– volume: 107
  start-page: 865
  year: 2011
  ident: 1130_CR12
  publication-title: Ann Bot
  doi: 10.1093/aob/mcq181
– volume: 25
  start-page: 919
  year: 2011
  ident: 1130_CR22
  publication-title: Trees
  doi: 10.1007/s00468-011-0566-6
– volume: 30
  start-page: 328
  year: 2008
  ident: 1130_CR47
  publication-title: IEEE Trans Pattern Anal Machine Intell
  doi: 10.1109/TPAMI.2007.1166
– volume: 22
  start-page: 1330
  year: 2000
  ident: 1130_CR45
  publication-title: IEEE Trans Pattern Anal Machine Intell
  doi: 10.1109/34.888718
– volume: 27
  start-page: 785
  year: 1978
  ident: 1130_CR1
  publication-title: Euphytica
  doi: 10.1007/BF00023715
– ident: 1130_CR46
  doi: 10.1109/CVPR.2006.294
– volume: 23
  start-page: 4572
  issue: 9
  year: 2023
  ident: 1130_CR39
  publication-title: Sensors
  doi: 10.3390/s23094572
– ident: 1130_CR50
  doi: 10.1117/12.596105
– volume: 23
  start-page: 569
  year: 2007
  ident: 1130_CR28
  publication-title: Vis Comput
  doi: 10.1007/s00371-007-0119-6
– volume: 16
  year: 2021
  ident: 1130_CR37
  publication-title: PLoS ONE
  doi: 10.1371/journal.pone.0256340
– year: 2016
  ident: 1130_CR42
  publication-title: Israel J Plant Sci
  doi: 10.1080/07929978.2016.1243405
– volume: 150
  start-page: 63
  year: 2010
  ident: 1130_CR20
  publication-title: Agric For Meteorol
  doi: 10.1016/j.agrformet.2009.08.007
– volume: 169
  start-page: 186
  year: 2013
  ident: 1130_CR21
  publication-title: Agric For Meteorol
  doi: 10.1016/j.agrformet.2012.10.011
– ident: 1130_CR6
  doi: 10.1109/PMA.2009.46
– volume-title: Practical statistics for medical research
  year: 1999
  ident: 1130_CR32
– volume: 76
  start-page: 800
  year: 1984
  ident: 1130_CR14
  publication-title: Agron J
  doi: 10.2134/agronj1984.00021962007600050021x
– volume: 29
  start-page: 300
  year: 2010
  ident: 1130_CR9
  publication-title: Crit Rev Plant Sci
  doi: 10.1080/07352689.2010.502086
– volume: 67
  start-page: 47
  issue: 2
  year: 2021
  ident: 1130_CR16
  publication-title: Agriculture (Pol'nohospodárstvo)
  doi: 10.2478/agri-2021-0005
– ident: 1130_CR17
  doi: 10.5772/intechopen.91551
– volume: 10
  start-page: 462
  year: 2020
  ident: 1130_CR38
  publication-title: Agriculture
  doi: 10.3390/agriculture10100462
– year: 2015
  ident: 1130_CR23
  publication-title: Plant Methods
  doi: 10.1186/s13007-015-0052-z
– volume: 11
  start-page: 96
  year: 2020
  ident: 1130_CR24
  publication-title: Front Plant Sci
  doi: 10.3389/fpls.2020.00096
– volume: 11
  start-page: 344
  year: 2019
  ident: 1130_CR34
  publication-title: Rem Sens
  doi: 10.3390/rs11030344
– volume: 65
  start-page: 297
  year: 2009
  ident: 1130_CR19
  publication-title: J Agric Meteorol
  doi: 10.2480/agrmet.65.3.6
– volume: 77
  start-page: 55
  year: 1995
  ident: 1130_CR2
  publication-title: Agric For Meteorol
  doi: 10.1016/0168-1923(95)02238-S
– volume: 62
  start-page: 453
  year: 2011
  ident: 1130_CR10
  publication-title: J Exp Bot
  doi: 10.1093/jxb/erq304
– volume: 135
  start-page: 23
  year: 2017
  ident: 1130_CR35
  publication-title: Comput Electron Agric
  doi: 10.1016/j.compag.2016.11.022
– year: 2018
  ident: 1130_CR33
  publication-title: Sensors
  doi: 10.3390/s18103576
– volume: 158
  start-page: 509
  year: 2003
  ident: 1130_CR5
  publication-title: New Phytol
  doi: 10.1046/j.1469-8137.2003.00765.x
– ident: 1130_CR27
  doi: 10.1109/IC3D.2013.6732085
– volume: 184
  start-page: 137
  year: 2014
  ident: 1130_CR4
  publication-title: Agric For Meteorol
  doi: 10.1016/j.agrformet.2013.09.010
– volume-title: Digital image processing
  year: 2018
  ident: 1130_CR49
– ident: 1130_CR15
– volume: 13
  start-page: 2232
  year: 2021
  ident: 1130_CR25
  publication-title: Rem Sens
  doi: 10.3390/rs13112232
– volume-title: Plant physiological ecology: field methods and instrumentation
  year: 1989
  ident: 1130_CR3
– volume: 45
  start-page: 255
  year: 1989
  ident: 1130_CR30
  publication-title: Biometrics
  doi: 10.2307/2532051
– volume-title: Algorithmische Geometrie: Grundlagen, Methoden, Anwendungen
  year: 2005
  ident: 1130_CR51
– volume: 10
  start-page: 1721
  year: 2020
  ident: 1130_CR44
  publication-title: Agronomy
  doi: 10.3390/agronomy10111721
– start-page: 53
  volume-title: Terrestrial ecosystem research infrastructures
  year: 2017
  ident: 1130_CR53
  doi: 10.1201/9781315368252-4
– ident: 1130_CR7
– ident: 1130_CR13
  doi: 10.5772/54528
– volume: 143
  start-page: 106
  year: 2007
  ident: 1130_CR41
  publication-title: Agric For Meteorol
  doi: 10.1016/j.agrformet.2006.12.003
– year: 2021
  ident: 1130_CR26
  publication-title: Auton Robot
  doi: 10.1007/s10514-021-09998-1
– volume: 21
  start-page: 1
  year: 1999
  ident: 1130_CR52
  publication-title: SIAM J Sci Comput
  doi: 10.1137/S1064827595289108
– volume: 20
  start-page: 401
  year: 1998
  ident: 1130_CR48
  publication-title: IEEE Trans Pattern Anal Machine Intell
  doi: 10.1109/34.677269
– volume: 176
  start-page: 1233
  year: 2018
  ident: 1130_CR11
  publication-title: Plant Physiol
  doi: 10.1104/pp.17.01213
– volume: 10
  start-page: 999
  year: 2019
  ident: 1130_CR8
  publication-title: Front Plant Sci
  doi: 10.3389/fpls.2019.00999
– volume: 13
  year: 2022
  ident: 1130_CR43
  publication-title: Front Plant Sci
  doi: 10.3389/fpls.2022.844522
– volume-title: Statistical power analysis for the behavioral sciences
  year: 2013
  ident: 1130_CR31
  doi: 10.4324/9780203771587
– ident: 1130_CR36
  doi: 10.1109/IJCNN55064.2022.9892024
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Snippet Background The leaf angle distribution (LAD) is an important structural parameter of agricultural crops that influences light interception, radiation fluxes...
The leaf angle distribution (LAD) is an important structural parameter of agricultural crops that influences light interception, radiation fluxes and...
Background The leaf angle distribution (LAD) is an important structural parameter of agricultural crops that influences light interception, radiation fluxes...
BackgroundThe leaf angle distribution (LAD) is an important structural parameter of agricultural crops that influences light interception, radiation fluxes and...
BACKGROUND: The leaf angle distribution (LAD) is an important structural parameter of agricultural crops that influences light interception, radiation fluxes...
Abstract Background The leaf angle distribution (LAD) is an important structural parameter of agricultural crops that influences light interception, radiation...
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SubjectTerms 3D plant reconstruction
absorption
Accuracy
Agricultural industry
Analysis
Beta distribution
Biological Techniques
Biomedical and Life Sciences
canopy
Cereal crops
Correlation coefficient
Correlation coefficients
Crops
Data acquisition
data collection
Data entry
Electromagnetic absorption
Experiments
Growth
Image processing
Image reconstruction
Inclination angle
Interception
Leaf angle
Leaf angle distribution
Leaves
Life Sciences
Light
Light interception
Mathematical models
Mean
Methodology
Methods
Parameterization
Parameters
Photosynthesis
Plant phenotyping
Plant Sciences
Plants (botany)
Probability distribution functions
standard deviation
Stereo imaging
Three dimensional models
Wheat
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Title Completing the picture of field-grown cereal crops: a new method for detailed leaf surface models in wheat
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