Abstract

Determination and classification of the bruise degree for cherry can improve consumer satisfaction with cherry quality and enhance the industry’s competiveness and profitability. In this study, visible and near infrared (Vis-NIR) reflection spectroscopy was used for identifying bruise degree of cherry in 350–2500 nm. Sampling spectral data were extracted from normal, slight and severe bruise samples. Principal component analysis (PCA) was implemented to determine the first few principal components (PCs) for cluster analysis among samples. Optimal wavelengths were selected by loadings of PCs from PCA and successive projection algorithm (SPA) method, respectively. Afterwards, these optimal wavelengths were empolyed to establish the classification models as inputs of least square-support vector machine (LS-SVM). Better performance for qualitative discrimination of the bruise degree for cherry was emerged in LS-SVM model based on five optimal wavelengths (603, 633, 679, 1083, and 1803 nm) selected directly by SPA, which showed acceptable results with the classification accuracy of 93.3%. Confusion matrix illustrated misclassification generally occurred in normal and slight bruise samples. Furthermore, the latent relation between spectral property of cherries in varying bruise degree and its firmness and soluble solids content (SSC) was analyzed. The result showed both colour, firmness and SSC were consistent with the Vis-NIR reflectance of cherries. Overall, this study revealed that Vis-NIR reflection spectroscopy integrated with multivariate analysis can be used as a rapid, intact method to determine the bruise degree of cherry, laying a foundation for cherry sorting and postharvest quality control.

Highlights

  • Cherry (Cerasus pseudocerasus) is one of the most popular fruits because it tastes unique and is small and more like berry than fruit

  • The objectives of this study were to: (1) collect cherry samples and classify them into three groups visually by expertise researcher according to bruise level, (2) investigate the potential of visible and near infrared (Vis-NIR) spectroscopy coupled with multivariate analysis methods to determine the bruise degrees of cherry, (3) explore the latent relationship between spectral property and the solids content (SSC) and firmness in varying bruise degree of cherries and its chemical composition

  • This study demonstrated the high potential of Vis-NIR reflection spectroscopy coupled with multivariate analysis for determination of cherry bruise degree

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Summary

Introduction

Cherry (Cerasus pseudocerasus) is one of the most popular fruits because it tastes unique and is small and more like berry than fruit. Cherry affected by bruises will tend towards fermentation, decay or mildew and infect other non-bruised ones after damage occurrence [5,6]. It is necessary to distinguish the bruised cherry from the non-bruised ones and sort them out before sale. It’s of great importance to develop a rapid, non-contact detection technique to identify the cherry bruise and determine its bruise degree. By sorting cherry in accordance with its bruise degree, better quality means better price and less food waste increasing profits

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