Author:
Fedor P.,Malenovský I.,Vaňhara J.,Sierka W.,Havel J.
Abstract
AbstractWe studied the use of a supervised artificial neural network (ANN) model for semi-automated identification of 18 common European species of Thysanoptera from four genera: Aeolothrips Haliday (Aeolothripidae), Chirothrips Haliday, Dendrothrips Uzel, and Limothrips Haliday (all Thripidae). As input data, we entered 17 continuous morphometric and two qualitative two-state characters measured or determined on different parts of the thrips body (head, pronotum, forewing and ovipositor) and the sex. Our experimental data set included 498 thrips specimens. A relatively simple ANN architecture (multilayer perceptrons with a single hidden layer) enabled a 97% correct simultaneous identification of both males and females of all the 18 species in an independent test. This high reliability of classification is promising for a wider application of ANN in the practice of Thysanoptera identification.
Publisher
Cambridge University Press (CUP)
Subject
Insect Science,Agronomy and Crop Science,General Medicine
Reference42 articles.
1. Thrips (Thysanoptera) in nests of birds and mammals in Slovakia;Pelikán;Ekológia (Bratislava),2002
2. Automated Identification of Optically Sensed Aphid (Homoptera: Aphidae) Wingbeat Waveforms
3. Automated bioacoustic identification of species;Chesmore;Anais da Academia Brasileira de Cięncias,2004
4. Technology transfer: applications of electronic technology in ecology and entomology for species identification;Chesmore;Natural History Research,1999
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