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Phenotyping date palm varieties via leaflet cross-sectional imaging and artificial neural network application.


ABSTRACT:

Background

True date palms (Phoenix dactylifera L.) are impressive trees and have served as an indispensable source of food for mankind in tropical and subtropical countries for centuries. The aim of this study is to differentiate date palm tree varieties by analysing leaflet cross sections with technical/optical methods and artificial neural networks (ANN).

Results

Fluorescence microscopy images of leaflet cross sections have been taken from a set of five date palm tree cultivars (Hewlat al Jouf, Khlas, Nabot Soltan, Shishi, Um Raheem). After features extraction from images, the obtained data have been fed in a multilayer perceptron ANN with backpropagation learning algorithm.

Conclusions

Overall, an accurate result in prediction and differentiation of date palm tree cultivars was achieved with average prediction in tenfold cross-validation is 89.1% and reached 100% in one of the best ANN.

SUBMITTER: Arinkin V 

PROVIDER: S-EPMC3941935 | biostudies-literature | 2014 Feb

REPOSITORIES: biostudies-literature

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Publications

Phenotyping date palm varieties via leaflet cross-sectional imaging and artificial neural network application.

Arinkin Vladimir V   Digel Ilya I   Porst Dariusz D   Artmann Aysegül Temiz AT   Artmann Gerhard M GM  

BMC bioinformatics 20140224


<h4>Background</h4>True date palms (Phoenix dactylifera L.) are impressive trees and have served as an indispensable source of food for mankind in tropical and subtropical countries for centuries. The aim of this study is to differentiate date palm tree varieties by analysing leaflet cross sections with technical/optical methods and artificial neural networks (ANN).<h4>Results</h4>Fluorescence microscopy images of leaflet cross sections have been taken from a set of five date palm tree cultivars  ...[more]

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