| Literature DB >> 30886829 |
Uroš Žibrat1, Nik Susič1, Matej Knapič1, Saša Širca1, Polona Strajnar1, Jaka Razinger1, Andrej Vončina1, Gregor Urek1, Barbara Gerič Stare1.
Abstract
Crop infestation with root-knot nematodes (RKN) and water deficiency lead to similar visible symptoms in the plant canopy. Identification of biotic or abiotic stress origin is therefore a problem, and currently the only reliable methods for determination of RKN infestation are invasive and applicable only for point-searches. In this study the applicability of hyperspectral remote sensing for early identification of drought stress and RKN infestations in tomato plants was tested. A four-stage image and data management pipeline was established: (1) image acquisition, (2) data extraction, (3) pre-processing, and (4) processing. •This pipeline reduces atmospheric impacts, facilitates data extraction (by using specially designed spectral libraries and supervised classification procedures), diminishes the impact of viewing geometry, and emphasized small spectral variations not apparent in the raw data.•By combining partial least squares - discriminant analysis and support vector machines with time series analysis, we achieved up to 100% classification success when determining watering regime and infestation, and their severity.•This pipeline could be at least partially automated, thus facilitating high throughput identification of stress origin in plants. Furthermore, the same pipeline could be applied to hyperspectral phenotyping procedures, which are gaining importance in breeding programs.Entities:
Keywords: Abiotic; Biotic; Detection; Drought stress; Hyperspectral image processing; Hyperspectral imaging; Meloidogyne; PLS-DA; PLS-SVM; Remote sensing; Root-knot nematode; Solanum lycopersicum; Stress; Tomato
Year: 2019 PMID: 30886829 PMCID: PMC6402290 DOI: 10.1016/j.mex.2019.02.022
Source DB: PubMed Journal: MethodsX ISSN: 2215-0161
Fig. 1Setup of the experiment. Plants were randomly assigned to one of six treatment groups, with seven biological replicates each.
Fig. 2Image and data processing pipeline. The process was divided into four parts. The first three parts were applied to each plant in each imaging sessions, and classifications (part four) were performed for each imaging session and for all sessions combined.
Fig. 3Spectral signatures of the four classes included in the spectral libraries. Lines denote mean spectra, and ribbons their according standard deviations.
Fig. 4Extraction of leaf-area pixels: a) original hyperspectral image; b) background removal; c) supervised classification using spectral information divergence; and d) final mask used to extract leaf-area pixels.
Fig. 5Spectral signatures of 200 randomly selected leaf-area pixels of one plant. The red line denotes mean spectrum, and the ribbon the standard deviation of the mean.
| H. Huang, L. Liu, M. Ngadi, Recent developments in hyperspectral imaging for assessment of food quality and safety, Sensors. 14 (2014) 7248–7276. | |