Literature DB >> 33597959

Prediction of Biomass and N Fixation of Legume-Grass Mixtures Using Sensor Fusion.

Esther Grüner1, Thomas Astor1, Michael Wachendorf1.   

Abstract

European farmers and especially organic farmers rely on legume-grass mixtures in their crop rotation as an organic nitrogen (N) source, as legumes can fix atmospheric N, which is the most important element for plant growth. Furthermore, legume-grass serves as valuable fodder for livestock and biogas plants. Therefore, information about aboveground biomass and N fixation (NFix) is crucial for efficient farm management decisions on the field level. Remote sensing, as a non-destructive and fast technique, provides different methods to quantify plant trait parameters. In our study, high-density point clouds, derived from terrestrial laser scanning (TLS), in combination with unmanned aerial vehicle-based multispectral (MS) data, were collected to receive information about three plant trait parameters (fresh and dry matter, nitrogen fixation) in two legume-grass mixtures. Several crop surface height metrics based on TLS and vegetation indices based on the four MS bands (green, red, red edge, and near-infrared) were calculated. Furthermore, eight texture features based on mean crop surface height and the four MS bands were generated to measure horizontal spatial heterogeneity. The aim of this multi-temporal study over two vegetation periods was to create estimation models based on biomass and N fixation for two legume-grass mixtures by sensor fusion, a combination of both sensors. To represent conditions in practical farming, e.g., the varying proportion of legumes, the experiment included pure stands of legume and grass of the mixtures. Sensor fusion of TLS and MS data was found to provide better estimates of biomass and N Fix than separate data analysis. The study shows the important role of texture based on MS and point cloud data, which contributed greatly to the estimation model generation. The applied approach offers an interesting method for improvements in precision agriculture.
Copyright © 2021 Grüner, Astor and Wachendorf.

Entities:  

Keywords:  grassland; multispectral; point clouds; remote sensing; texture

Year:  2021        PMID: 33597959      PMCID: PMC7883874          DOI: 10.3389/fpls.2020.603921

Source DB:  PubMed          Journal:  Front Plant Sci        ISSN: 1664-462X            Impact factor:   5.753


  1 in total

1.  Global application of an unoccupied aerial vehicle photogrammetry protocol for predicting aboveground biomass in non-forest ecosystems.

Authors:  Andrew M Cunliffe; Karen Anderson; Fabio Boschetti; Richard E Brazier; Hugh A Graham; Isla H Myers-Smith; Thomas Astor; Matthias M Boer; Leonor G Calvo; Patrick E Clark; Michael D Cramer; Miguel S Encinas-Lara; Stephen M Escarzaga; José M Fernández-Guisuraga; Adrian G Fisher; Kateřina Gdulová; Breahna M Gillespie; Anne Griebel; Niall P Hanan; Muhammad S Hanggito; Stefan Haselberger; Caroline A Havrilla; Phil Heilman; Wenjie Ji; Jason W Karl; Mario Kirchhoff; Sabine Kraushaar; Mitchell B Lyons; Irene Marzolff; Marguerite E Mauritz; Cameron D McIntire; Daniel Metzen; Luis A Méndez-Barroso; Simon C Power; Jiří Prošek; Enoc Sanz-Ablanedo; Katherine J Sauer; Damian Schulze-Brüninghoff; Petra Šímová; Stephen Sitch; Julian L Smit; Caiti M Steele; Susana Suárez-Seoane; Sergio A Vargas; Miguel Villarreal; Fleur Visser; Michael Wachendorf; Hannes Wirnsberger; Robert Wojcikiewicz
Journal:  Remote Sens Ecol Conserv       Date:  2021-07-07
  1 in total

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