Literature DB >> 32480838

Early drought stress detection in cereals: simplex volume maximisation for hyperspectral image analysis.

Christoph R Mer1, Mirwaes Wahabzada2, Agim Ballvora3, Francisco Pinto4, Micol Rossini5, Cinzia Panigada5, Jan Behmann1, Jens L On3, Christian Thurau2, Christian Bauckhage2, Kristian Kersting2, Uwe Rascher4, Lutz Pl Mer1.   

Abstract

Early water stress recognition is of great relevance in precision plant breeding and production. Hyperspectral imaging sensors can be a valuable tool for early stress detection with high spatio-temporal resolution. They gather large, high dimensional data cubes posing a significant challenge to data analysis. Classical supervised learning algorithms often fail in applied plant sciences due to their need of labelled datasets, which are difficult to obtain. Therefore, new approaches for unsupervised learning of relevant patterns are needed. We apply for the first time a recent matrix factorisation technique, simplex volume maximisation (SiVM), to hyperspectral data. It is an unsupervised classification approach, optimised for fast computation of massive datasets. It allows calculation of how similar each spectrum is to observed typical spectra. This provides the means to express how likely it is that one plant is suffering from stress. The method was tested for drought stress, applied to potted barley plants in a controlled rain-out shelter experiment and to agricultural corn plots subjected to a two factorial field setup altering water and nutrient availability. Both experiments were conducted on the canopy level. SiVM was significantly better than using a combination of established vegetation indices. In the corn plots, SiVM clearly separated the different treatments, even though the effects on leaf and canopy traits were subtle.

Entities:  

Year:  2012        PMID: 32480838     DOI: 10.1071/FP12060

Source DB:  PubMed          Journal:  Funct Plant Biol        ISSN: 1445-4416            Impact factor:   3.101


  5 in total

1.  Sorting biotic and abiotic stresses on wild rocket by leaf-image hyperspectral data mining with an artificial intelligence model.

Authors:  Alejandra Navarro; Nicola Nicastro; Corrado Costa; Alfonso Pentangelo; Mariateresa Cardarelli; Luciano Ortenzi; Federico Pallottino; Teodoro Cardi; Catello Pane
Journal:  Plant Methods       Date:  2022-04-02       Impact factor: 4.993

Review 2.  Recent Advances in Sugarcane Genomics, Physiology, and Phenomics for Superior Agronomic Traits.

Authors:  Mintu Ram Meena; Chinnaswamy Appunu; R Arun Kumar; R Manimekalai; S Vasantha; Gopalareddy Krishnappa; Ravinder Kumar; S K Pandey; G Hemaprabha
Journal:  Front Genet       Date:  2022-08-03       Impact factor: 4.772

Review 3.  Breeding, Genetics, and Genomics Approaches for Improving Fusarium Wilt Resistance in Major Grain Legumes.

Authors:  Uday Chand Jha; Abhishek Bohra; Shailesh Pandey; Swarup Kumar Parida
Journal:  Front Genet       Date:  2020-10-23       Impact factor: 4.599

4.  Exploiting High-Throughput Indoor Phenotyping to Characterize the Founders of a Structured B. napus Breeding Population.

Authors:  Jana Ebersbach; Nazifa Azam Khan; Ian McQuillan; Erin E Higgins; Kyla Horner; Venkat Bandi; Carl Gutwin; Sally Lynne Vail; Steve J Robinson; Isobel A P Parkin
Journal:  Front Plant Sci       Date:  2022-01-05       Impact factor: 5.753

5.  Peanut Leaf Wilting Estimation From RGB Color Indices and Logistic Models.

Authors:  Sayantan Sarkar; A Ford Ramsey; Alexandre-Brice Cazenave; Maria Balota
Journal:  Front Plant Sci       Date:  2021-06-18       Impact factor: 5.753

  5 in total

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