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Application of artificial neural network for the quality-based classification of spray-dried rhubarb juice powders

Krzysztof Przybył, Jolanta Gawałek, K. Koszela

2020Journal of Food Science and Technology31 citationsDOIOpen Access PDF

Abstract

The aim of the study was to develop a neural model enabling classification of fruit spray dried powders, on the basis of graphic data acquired from a bitmap received in the process of spray drying. The neural model was developed with multi-layer perceptron topology. Input variables were expressed in 46 image descriptors based on RGB, YCbCr, HSV (B) and HSL models. Sensitivity analysis of input variables and principal component analysis determined the significance level of each attribute. The optimal model with the lowest error value root mean square, at the level of 0.04 contained 46 neurons in the input layer, 11 neurons in the hidden layer, 10 neurons in the output layer. The results allowed to show that dyeing force (color features) had influence on effective differentiation of the research material consisting of spray-dried powders of rhubarb juice with various dried juice content levels: 30, 40 and 50% as well as high ("H") and low ("L") level of saccharification a chosen carrier (potato maltodextrin).

Topics & Concepts

MaltodextrinSpray dryingArtificial neural networkMathematicsPattern recognition (psychology)Artificial intelligencePrincipal component analysisLearning vector quantizationYCbCrRGB color modelBiological systemFood scienceComputer scienceChemistryChromatographyImage processingImage (mathematics)Color imageBiologyMicroencapsulation and Drying ProcessesFood Drying and ModelingMicrobial Inactivation Methods
Application of artificial neural network for the quality-based classification of spray-dried rhubarb juice powders | Litcius