4.6 Article

Combining Feature Selection Techniques and Neurofuzzy Systems for the Prediction of Total Viable Counts in Beef Fillets Using Multispectral Imaging

期刊

SENSORS
卷 23, 期 23, 页码 -

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MDPI
DOI: 10.3390/s23239451

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neural networks; ensemble systems; fuzzy logic; beef; total viable counts; regression; multispectral imaging; machine learning

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This paper presents a prediction system based on multispectral imaging technique for predicting the total viable counts of microorganisms in beef fillet samples. The paper also explores a feature fusion approach and compares the performance of neurofuzzy models with other regression algorithms. The results confirm the validity of using feature selection methods and neurofuzzy models for assessing the microbiological quality of meat products.
In the food industry, quality and safety issues are associated with consumers' health condition. There is a growing interest in applying various noninvasive sensorial techniques to obtain quickly quality attributes. One of them, hyperspectral/multispectral imaging technique has been extensively used for inspection of various food products. In this paper, a stacking-based ensemble prediction system has been developed for the prediction of total viable counts of microorganisms in beef fillet samples, an essential cause to meat spoilage, utilizing multispectral imaging information. As the selection of important wavelengths from the multispectral imaging system is considered as an essential stage to the prediction scheme, a features fusion approach has been also explored, by combining wavelengths extracted from various feature selection techniques. Ensemble sub-components include two advanced clustering-based neuro-fuzzy network prediction models, one utilizing information from average reflectance values, while the other one from the standard deviation of the pixels' intensity per wavelength. The performances of neurofuzzy models were compared against established regression algorithms such as multilayer perceptron, support vector machines and partial least squares. Obtained results confirmed the validity of the proposed hypothesis to utilize a combination of feature selection methods with neurofuzzy models in order to assess the microbiological quality of meat products.

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