Agriculture (Aug 2021)

Image Analysis Methods in Classifying Selected Malting Barley Varieties by Neural Modelling

  • Agnieszka A. Pilarska,
  • Piotr Boniecki,
  • Małgorzata Idzior-Haufa,
  • Maciej Zaborowicz,
  • Krzysztof Pilarski,
  • Andrzej Przybylak,
  • Hanna Piekarska-Boniecka

DOI
https://doi.org/10.3390/agriculture11080732
Journal volume & issue
Vol. 11, no. 8
p. 732

Abstract

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Quality evaluation of products is a critical stage in the process of production. It also applies to the production of beer and its main ingredients, i.e., hops, yeast, malting barley and other components. The research described in this paper deals with the multifaceted quality evaluation of malting barley needed for the production of malt. The project aims to elaborate on the original methodology used for identifying grain varieties, grain contamination degree and other visual characteristics of malting barley employing new computer technologies, including artificial intelligence (AI) and neural image analysis. The neural modelling and digital image analysis assist in identifying the quality of barley varieties. According to the study, information concerning the colour of barley varieties presented in digital images is sufficient for this purpose. The multi-layer perceptron (MLP)-type neural network generated using a data set describing the colour of kernels presented in digital images was the best model for recognising the analysed malting barley varieties. The proposed procedure may bring specific benefits to malthouses, influencing the beer production quality in the future.

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