4.7 Article

Identification of plant leaf phosphorus content at different growth stages based on hyperspectral reflectance

Journal

BMC PLANT BIOLOGY
Volume 21, Issue 1, Pages -

Publisher

BMC
DOI: 10.1186/s12870-020-02807-4

Keywords

Hyperspectral imaging; Supervised classification; Phosphorus fertilization; Precision agriculture

Categories

Funding

  1. Polish National Centre for Research and Development [BIOSTRATEG3/343547/8/NCBR/2017]

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The study investigated the effect of different phosphorus fertilization levels on the growth performance of three popular crops using hyperspectral imaging and machine learning algorithms, revealing the impact of phosphorus on chlorophyll and carotenoid contents. The results demonstrated the potential of hyperspectral imaging combined with artificial intelligence methods for non-invasive detection of phosphorus fertilization levels in crops.
BackgroundModern agriculture strives to sustainably manage fertilizer for both economic and environmental reasons. The monitoring of any nutritional (phosphorus, nitrogen, potassium) deficiency in growing plants is a challenge for precision farming technology. A study was carried out on three species of popular crops, celery (Apium graveolens L., cv. Neon), sugar beet (Beta vulgaris L., cv. Tapir) and strawberry (Fragaria x ananassa Duchesne, cv. Honeoye), fertilized with four different doses of phosphorus (P) to deliver data for non-invasive detection of P content.ResultsData obtained via biochemical analysis of the chlorophyll and carotenoid contents in plant material showed that the strongest effect of P availability for plants was in the diverse total chlorophyll content in sugar beet and celery compared to that in strawberry, in which P affects a variety of carotenoid contents in leaves. The measurements performed using hyperspectral imaging, obtained in several different stages of plant development, were applied in a supervised classification experiment. A machine learning algorithm (Backpropagation Neural Network, Random Forest, Naive Bayes and Support Vector Machine) was developed to classify plants from four variants of P fertilization. The lowest prediction accuracy was obtained for the earliest measured stage of plant development. Statistical analyses showed correlations between leaf biochemical constituents, phosphorus fertilization and the mass of the leaf/roots of the plants.ConclusionsObtained results demonstrate that hyperspectral imaging combined with artificial intelligence methods has potential for non-invasive detection of non-homogenous phosphorus fertilization on crop levels.

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