3.8 Proceedings Paper

Neural classification of the selected family of butterflies

Publisher

SPIE-INT SOC OPTICAL ENGINEERING
DOI: 10.1117/12.2281705

Keywords

artificial neural networks; image recognizing; butterflies classification

Funding

  1. National Centre for Research and Development [PBS3/B8/26/2015]

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There have been noticed growing explorers' interest in drawing conclusions based on information of data coded in a graphic form. The neuronal identification of pictorial data, with special emphasis on both quantitative and qualitative analysis, is more frequently utilized to gain and deepen the empirical data knowledge. Extraction and then classification of selected picture features, such as color or surface structure, enables one to create computer tools in order to identify these objects presented as, for example, digital pictures. The work presents original computer system Processing the image v.1.0 designed to digitalize pictures on the basis of color criterion. The system has been applied to generate a reference learning file for generating the Artificial Neural Network (ANN) to identify selected kinds of butterflies from the Papilionidae family.

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