Literature DB >> 24792473

Gaussian processes retrieval of leaf parameters from a multi-species reflectance, absorbance and fluorescence dataset.

Shari Van Wittenberghe1, Jochem Verrelst2, Juan Pablo Rivera2, Luis Alonso2, José Moreno2, Roeland Samson3.   

Abstract

Biochemical and structural leaf properties such as chlorophyll content (Chl), nitrogen content (N), leaf water content (LWC), and specific leaf area (SLA) have the benefit to be estimated through nondestructive spectral measurements. Current practices, however, mainly focus on a limited amount of wavelength bands while more information could be extracted from other wavelengths in the full range (400-2500nm) spectrum. In this research, leaf characteristics were estimated from a field-based multi-species dataset, covering a wide range in leaf structures and Chl concentrations. The dataset contains leaves with extremely high Chl concentrations (>100μgcm(-2)), which are seldom estimated. Parameter retrieval was conducted with the machine learning regression algorithm Gaussian Processes (GP), which is able to perform adaptive, nonlinear data fitting for complex datasets. Moreover, insight in relevant bands is provided during the development of a regression model. Consequently, the physical meaning of the model can be explored. Best estimates of SLA, LWC and Chl yielded a best obtained normalized root mean square error of 6.0%, 7.7%, 9.1%, respectively. Several distinct wavebands were chosen across the whole spectrum. A band in the red edge (710nm) appeared to be most important for the estimation of Chl. Interestingly, spectral features related to biochemicals with a structural or carbon storage function (e.g. 1090, 1550, 1670, 1730nm) were found important not only for estimation of SLA, but also for LWC, Chl or N estimation. Similar, Chl estimation was also helped by some wavebands related to water content (950, 1430nm) due to correlation between the parameters. It is shown that leaf parameter retrieval by GP regression is successful, and able to cope with large structural differences between leaves.
Copyright © 2014 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Chlorophyll; Hyperspectral; Leaf structure; Leaf water content; Machine learning algorithm; Parameter retrieval; Specific leaf area; Spectral features

Mesh:

Substances:

Year:  2014        PMID: 24792473     DOI: 10.1016/j.jphotobiol.2014.03.010

Source DB:  PubMed          Journal:  J Photochem Photobiol B        ISSN: 1011-1344            Impact factor:   6.252


  8 in total

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Journal:  ISPRS J Photogramm Remote Sens       Date:  2022-04-01       Impact factor: 11.774

2.  Retrieval of canopy water content of different crop types with two new hyperspectral indices: Water Absorption Area Index and Depth Water Index.

Authors:  Nieves Pasqualotto; Jesús Delegido; Shari Van Wittenberghe; Jochem Verrelst; Juan Pablo Rivera; José Moreno
Journal:  Int J Appl Earth Obs Geoinf       Date:  2018-05

3.  Crop Nitrogen Retrieval Methods for Simulated Sentinel-2 Data Using In-Field Spectrometer Data.

Authors:  Gregor Perich; Helge Aasen; Jochem Verrelst; Francesco Argento; Achim Walter; Frank Liebisch
Journal:  Remote Sens (Basel)       Date:  2021-06-19       Impact factor: 5.349

4.  Retrieval of aboveground crop nitrogen content with a hybrid machine learning method.

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Journal:  Int J Appl Earth Obs Geoinf       Date:  2020-10-01

5.  Seasonal Mapping of Irrigated Winter Wheat Traits in Argentina with a Hybrid Retrieval Workflow Using Sentinel-2 Imagery.

Authors:  Gabriel Caballero; Alejandro Pezzola; Cristina Winschel; Alejandra Casella; Paolo Sanchez Angonova; Juan Pablo Rivera-Caicedo; Katja Berger; Jochem Verrelst; Jesus Delegido
Journal:  Remote Sens (Basel)       Date:  2022-09-10       Impact factor: 5.349

6.  HyperART: non-invasive quantification of leaf traits using hyperspectral absorption-reflectance-transmittance imaging.

Authors:  Sergej Bergsträsser; Dimitrios Fanourakis; Simone Schmittgen; Maria Pilar Cendrero-Mateo; Marcus Jansen; Hanno Scharr; Uwe Rascher
Journal:  Plant Methods       Date:  2015-01-16       Impact factor: 4.993

7.  Dissection of hyperspectral reflectance to estimate nitrogen and chlorophyll contents in tea leaves based on machine learning algorithms.

Authors:  Hiroto Yamashita; Rei Sonobe; Yuhei Hirono; Akio Morita; Takashi Ikka
Journal:  Sci Rep       Date:  2020-10-15       Impact factor: 4.379

8.  Potential of spectroscopic analyses for non-destructive estimation of tea quality-related metabolites in fresh new leaves.

Authors:  Hiroto Yamashita; Rei Sonobe; Yuhei Hirono; Akio Morita; Takashi Ikka
Journal:  Sci Rep       Date:  2021-02-18       Impact factor: 4.379

  8 in total

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