Abstract

Rice quality assessment is essential for meeting high-quality standards and consumer demands. However, challenges remain in developing cost-effective and rapid techniques to assess commercial rice grain quality traits. This paper presents the application of computer vision (CV) and machine learning (ML) to classify commercial rice samples based on dimensionless morphometric parameters and color parameters extracted using CV algorithms from digital images obtained from a smartphone camera. The artificial neural network (ANN) model was developed using nine morpho-colorimetric parameters to classify rice samples into 15 commercial rice types. Furthermore, the ANN models were deployed and evaluated on a different imaging system to simulate their practical applications under different conditions. Results showed that the best classification accuracy was obtained using the Bayesian Regularization (BR) algorithm of the ANN with ten hidden neurons at 91.6% (MSE = <0.01) and 88.5% (MSE = 0.01) for the training and testing stages, respectively, with an overall accuracy of 90.7% (Model 2). Deployment also showed high accuracy (93.9%) in the classification of the rice samples. The adoption by the industry of rapid, reliable, and accurate methods, such as those presented here, may allow the incorporation of different morpho-colorimetric traits in rice with consumer perception studies.

Highlights

  • Commercial rice (Oryza sativa) is available in various grades to meet consumer needs according to price and consumer preferences

  • The fractal dimension (FD) was formerly used by Jinorose et al [64] to examine the effect of the parboiling process and cooking time on the physical changes of cooked rice grains based on image analysis

  • This study showed the development of a cost-effective and rapid method to classify commercial rice samples obtained from a smartphone camera

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Summary

Introduction

Commercial rice (Oryza sativa) is available in various grades to meet consumer needs according to price and consumer preferences. The diverse rice germplasm consumed worldwide has high variability in its quality traits and has been linked with the physicochemical properties of the rice grains [1,2,3,4,5]. These traits are related to consumer acceptance of size and shape, color, odor/aroma, purity, homogeneity, and texture [6]. Raw rice quality is commonly associated with consumer perception, mainly before purchasing the product It is evaluated visually based on the appearance of the rice grains, which is considered an important factor affecting buying decisions [7,8]. A study conducted by Jeesan and Seo [12] showed that the color cues of cooked rice elicited consumer perceptions of the aroma, affected acceptance, and evoked a range of emotional responses

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