Remote and Proximal Assessment of Plant Traits
- (i)
- (ii)
- (iii)
- (iv)
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
- Varela, S.; Pederson, T.; Bernacchi, C.J.; Leakey, A.D.B. Understanding Growth Dynamics and Yield Prediction of Sorghum Using High Temporal Resolution UAV Imagery Time Series and Machine Learning. Remote Sens. 2021, 13, 1763. [Google Scholar] [CrossRef]
- de Sá, N.C.; Baratchi, M.; Hauser, L.T.; van Bodegom, P. Exploring the Impact of Noise on Hybrid Inversion of PROSAIL RTM on Sentinel-2 Data. Remote Sens. 2021, 13, 648. [Google Scholar] [CrossRef]
- Qiu, Z.; Xiang, H.; Ma, F.; Du, C. Qualifications of Rice Growth Indicators Optimized at Different Growth Stages Using Unmanned Aerial Vehicle Digital Imagery. Remote Sens. 2020, 12, 3228. [Google Scholar] [CrossRef]
- Mahajan, G.R.; Das, B.; Murgaokar, D.; Herrmann, I.; Berger, K.; Sahoo, R.N.; Patel, K.; Desai, A.R.; Morajkar, S.; Kulkarni, R.M. Monitoring the Foliar Nutrients Status of Mango Using Spectroscopy-Based Spectral Indices and PLSR-Combined Machine Learning Models. Remote Sens. 2021, 13, 641. [Google Scholar] [CrossRef]
- Miraglio, T.; Adeline, K.; Huesca, M.; Ustin, S.; Briottet, X. Joint Use of PROSAIL and DART for Fast LUT Building: Application to Gap Fraction and Leaf Biochemistry Estimations over Sparse Oak Stands. Remote Sens. 2020, 12, 2925. [Google Scholar] [CrossRef]
- Kennedy, B.E.; King, D.J.; Duffe, J. Comparison of Empirical and Physical Modelling for Estimation of Biochemical and Biophysical Vegetation Properties: Field Scale Analysis across an Arctic Bioclimatic Gradient. Remote Sens. 2020, 12, 3073. [Google Scholar] [CrossRef]
- Ronay, I.; Ephrath, J.E.; Eizenberg, H.; Blumberg, D.G.; Maman, S. Hyperspectral Reflectance and Indices for Characterizing the Dynamics of Crop–Weed Competition for Water. Remote Sens. 2021, 13, 513. [Google Scholar] [CrossRef]
- Castrignanò, A.; Belmonte, A.; Antelmi, I.; Quarto, R.; Quarto, F.; Shaddad, S.; Sion, V.; Muolo, M.R.; Ranieri, N.A.; Gadaleta, G.; et al. Semi-Automatic Method for Early Detection of Xylella fastidiosa in Olive Trees Using UAV Multispectral Imagery and Geostatistical-Discriminant Analysis. Remote Sens. 2021, 13, 14. [Google Scholar]
- Rufo, R.; Soriano, J.M.; Villegas, D.; Royo, C.; Bellvert, J. Using Unmanned Aerial Vehicle and Ground-Based RGB Indices to Assess Agronomic Performance of Wheat Landraces and Cultivars in a Mediterranean-Type Environment. Remote Sens. 2021, 13, 1187. [Google Scholar] [CrossRef]
- Wang, H.; Ghosh, A.; Linquist, B.A.; Hijmans, R.J. Satellite-Based Observations Reveal Effects of Weather Variation on Rice Phenology. Remote Sens. 2020, 12, 1522. [Google Scholar] [CrossRef]
- Aharon, S.; Peleg, Z.; Argaman, E.; Ben-David, R.; Lati, R.N. Image-Based High-Throughput Phenotyping of Cereals Early Vigor and Weed-Competitiveness Traits. Remote Sens. 2020, 12, 3877. [Google Scholar] [CrossRef]
- Berger, K.; Rivera Caicedo, J.P.; Martino, L.; Wocher, M.; Hank, T.; Verrelst, J. A Survey of Active Learning for Quantifying Vegetation Traits from Terrestrial Earth Observation Data. Remote Sens. 2021, 13, 287. [Google Scholar] [CrossRef]
- Khak Pour, M.; Fotouhi, R.; Hucl, P.; Zhang, Q. Development of a Mobile Platform for Field-Based High-Throughput Wheat Phenotyping. Remote Sens. 2021, 13, 1560. [Google Scholar] [CrossRef]
- Estévez, J.; Berger, K.; Vicent, J.; Rivera-Caicedo, J.P.; Wocher, M.; Verrelst, J. Top-of-Atmosphere Retrieval of Multiple Crop Traits Using Variational Heteroscedastic Gaussian Processes within a Hybrid Workflow. Remote Sens. 2021, 13, 1589. [Google Scholar] [CrossRef]
# | Reference | Topic/Short Title | Targeted Traits | Ecosystem (Vegetation Type) | Scale (Level) | Platform, Spectral Resolution (Sensor) | Retrieval Methods | Study Type |
---|---|---|---|---|---|---|---|---|
1 | Wang et al. [10] | Effects of weather variation on rice phenology. | phenology | Ag (rice) | regional (canopy-level) | satellite, hyperspectral (MODIS) | time series analysis | Research |
2 | Miraglio et al. [5] | Joint use of PROSAIL and DART for fast LUT building. | gap fraction, leaf chlorophyll content, leaf carotenoid content, leaf water content and leaf mass per area (LMA) | woodland savanna (oak stands) | local/stands (canopy-level) | airborne, hyperspectral (AVIRIS) and proximal sensing (ASD field spectrometer) | RTM (inversion with look-up table) | Research |
3 | Kennedy et al. [6] | Monitoring vegetation variables in Arctic environments using multi-angle hyperspectral data. | leaf and canopy chlorophyll content (LCC, CCC) and plant area index (PAI) | herbaceous plants, shrubs, mosses, sedges and grasses and lichens | local plots (canopy-level) | proximal sensing, hyperspectral (ASD field spectrometer) | RTM (numerical optimization and look-up tables), VIs and GPR | Research |
4 | Qiu et al. [3] | Estimation of the key rice growth indicators by means of commercial RGB cameras of unmanned aerial vehicles (UAVs). | leaf dry biomass, leaf area index and leaf total nitrogen | Ag (rice) | local plots (canopy-level) | UAV (multispectral) | VIs: Green Leaf Index (GLI) and Red Green Ratio Index (RGRI), Modified Green Red Vegetation Index (MGRVI), Excess Red Vegetation Index (ExR) | Research |
5 | Aharon et al. [11] | Evaluation of image-driven plant phenotyping methods to facilitate effective and accurate selection for early vigor in cereals. | various morphological growth parameters | Ag (triticale and ryegrass) | stands and local plots (single plant and canopy) | ground-based and UAV (RGB) | 3D and 2D modeling, time series, VI: excessive green (ExG) | Research |
6 | Castrignanò et al. [8] | Early Detection of Xylella fastidiosa in Olive Trees Using UAV | scale of symptom severity | Ag (olive groves) | local stands (leaf- and canopy level) | UAV, multispectral (DJI Mavic Pro drone with a four-band multispectral camera) | non-parametric classification method | Research |
7 | Berger et al. [12] | Survey and experimental case study about active learning for solving regression problems | leaf carotenoid content, leaf water content | Ag (winter wheat and maize) | fields (canopy-level) | airborne (HyMAP) resampled to EnMAP, hyperspectral | hybrid (RTM and GPR), active learning | Review |
8 | Ronay et al. [7] | Characterization of physiological changes in corn during early growth due to crop–weed competition, detected through hyperspectral measurements. | relative water content, leaf chlorophyll content, photosynthetic rate and stomatal conductance, intercellular CO2 | Ag (maize) | pots in greenhouse (leaf-level) | proximal sensing, hyperspectral (ASD field spectrometer) | hyperspectral VIs | Research |
9 | Mahajan et al. [4] | Remote sensing methods to characterize foliar nutrient status of mango. | P, K, Ca, Mg, S, Fe, Mn, Zn, Cu, B, N | Ag (mango) | regional (leaf-level) | proximal sensing, hyperspectral (GER1500 spectroradiometer) | VI, partial least square regression (PLSR), principal component regression and support vector regression (SVR) | Research |
10 | de Sá et al. [2] | Exploration of noise impact on hybrid inversion of PROSAIL using Sentinel-2 data. | leaf chlorophyll content, leaf dry matter content, leaf water content, leaf area index | local (canopy-level) | synthetic, multispectral (Sentinel-2) | hybrid (RTM and GPR, random forests, artificial neural networks (ANN) and multi-task neural networks) | Research | |
11 | Rufo et al. [9] | Evaluation of a 4-band multispectral camera on-board an unmanned aerial vehicle (UAV) and ground-based RGB imagery to predict agronomic and biophysical traits. | leaf area index (LAI), agronomic traits (grain yield and number of grains) | Ag (wheat) | local (canopy-level) | airborne (UAV) and proximal sensing (JAZ-3 Ocean Optics STS VIS spectrometer), multispectral | VIs (modified triangular vegetation index—MTVI2, NDVI, GNDVI), stepwise multiple regression analysis | Research |
12 | Khak Pour et al. [13] | developing mobile platform for field-based high-throughput wheat phenotyping | canopy height, temperature, humidity | Ag (wheat and similar crops) | local (canopy level) | ground level (multispectral active sensor, ultra-sonic and thermal) | mounting sensors and developing software | Technical note |
13 | Estévez et al. [14] | Top-of-atmosphere retrieval of multiple crop traits by means of hybrid retrieval workflow. | leaf water content, leaf chlorophyll content, fractional vegetation cover, leaf area index, canopy chlorophyll content, canopy water content | Ag (winter wheat, maize) | local—regional (top-of atmosphere and top-of-canopy) | satellite, multispectral (Sentinel-2) | hybrid (RTM & GPR) | Research |
14 | Varela et al. [1] | Growth dynamics and yield prediction of sorghum using high temporal resolution UAV imagery time series and machine learning. | canopy cover, biomass, canopy height | Ag (sorghum) | local (canopy level) | UAV (multispectral) | 3D modeling, VIs, random forest (RF), time series | Research |
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. |
© 2021 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Share and Cite
Herrmann, I.; Berger, K. Remote and Proximal Assessment of Plant Traits. Remote Sens. 2021, 13, 1893. https://doi.org/10.3390/rs13101893
Herrmann I, Berger K. Remote and Proximal Assessment of Plant Traits. Remote Sensing. 2021; 13(10):1893. https://doi.org/10.3390/rs13101893
Chicago/Turabian StyleHerrmann, Ittai, and Katja Berger. 2021. "Remote and Proximal Assessment of Plant Traits" Remote Sensing 13, no. 10: 1893. https://doi.org/10.3390/rs13101893
APA StyleHerrmann, I., & Berger, K. (2021). Remote and Proximal Assessment of Plant Traits. Remote Sensing, 13(10), 1893. https://doi.org/10.3390/rs13101893