Abstract

Color index and water content are important indicators for evaluating the quality of fresh-cut potato tuber slices. In this study, hyperspectral imaging combined with multivariate analysis was used to detect the color parameters (L*, a*, b*, Browning index (BI), L*/b*) and water content of fresh-cut potato tuber slices. The successive projections algorithm (SPA) and competitive adaptive reweighted sampling (CARS) were used to extract characteristic wavelengths, partial least squares (PLS) and least squares support vector machine (LS-SVM) were utilized to establish regression models. For color prediction, R2c, R2p and RPD of all the LSSVM models established for the five color indicators L*, a*, b*, BI, L*/b* were exceeding 0.90, 0.84 and 2.1, respectively. For water content prediction, R2c, R2p, and RPD of the LSSVM models were over 0.80, 0.77 and 1.9, respectively. LS-SVM model based on full spectra was used to reappear the spatial distribution of color and water content in fresh-cut potato tuber slices by pseudo-color imaging since it performed best in most cases. The results illustrated that hyperspectral imaging could be an effective method for color and water content prediction, which could provide solid theoretical basis for subsequent grading and processing of fresh-cut potato tuber slices.

Highlights

  • Potato is one of the largest food crop throughout the world

  • Standard deviation of the predicted values of the calibration set and validation set obtained by these models were similar, and both of them were similar to standard deviation of the measured values. These results indicated that multivariate analysis of partial least squares (PLS) and least squares support vector machine (LS-SVM) were conducive to characterize the color of fresh-cut potato tuber slices effectively

  • Hyperspectral imaging system within the wavelength range 400–1000 nm coupled with multivariate analysis was applied for color index (L*, a*, b*, browning index (BI), L*/b*) and water content prediction of fresh-cut potato tuber slices

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Summary

Introduction

Potato is one of the largest food crop throughout the world. Potato is rich in carbohydrates, potassium, vitamin C and vitamin B6, making it an excellent food source [1,2,3]. The oxygen environment accelerates the oxidation of phenolic compounds to form quinones-based polymers, which eventually lead to pigment formation. This series of reactions are enzymatic browning [4]. Browning deepens the color of potato tuber slices, and impacts their sensory quality. Fresh-cut potato tuber slices are prone to water loss at room temperature condition, which accelerates the decline of sensory quality. The color and water content largely reflect the freshness of fresh-cut potato tuber slices. Rapid detection of color and water content can help determine the quality of fresh-cut potato tuber slices and provide a theoretical basis for quality monitoring and food grading

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