AI Article Synopsis

  • The assessment of food quality is crucial for maintaining standards, extending shelf life, and ensuring consistent taste, especially for rice, a staple for half of the global population, with Pakistan being a major exporter.
  • This study introduces 'National Grain Tech', an advanced desktop application utilizing computer vision and machine learning for efficient rice quality evaluation based on seven features across six rice types.
  • Testing over three months in rice factories showed remarkable accuracy rates, achieving 99% for key quality metrics and outperforming previous methods that focused on fewer features for a single rice type.

Article Abstract

The assessment of food quality is of significant importance as it allows control over important features, such as ensuring adherence to food standards, longer shelf life, and consistency and quality of taste. Rice is the predominant dietary source of half the world's population, and Pakistan contributes around 80% of the rice trade worldwide and is among the top three of the largest exporters. Hitherto, the rice industry has depended on antiquated methods of rice quality assessment through manual inspection, which is time consuming and prone to errors. In this study, an efficient desktop-application-based rice quality evaluation system, 'National Grain Tech', based on computer vision and machine learning, is presented. The analysis is based on seven main features, including grain length, width, weight, yellowness, broken, chalky, and/or damaged kernels for six different types of rice: IRRI-6, PK386, 1121 white and Selah, Super kernel basmati brown, and white rice. The system was tested in rice factories for 3 months and demonstrated 99% accuracy in determining the size, weight, color, and chalkiness of rice kernels. An accuracy of 98.8% was achieved for the classification of damaged and undamaged kernels, 98% for determining broken kernels, and 100% for paddy kernels. The results are significant because the developed system improves the local rice quality testing capacity through a faster, more accurate, and less expensive mechanism in comparison to previous research studies, which only evaluated four features of the singular rice type, rather than the seven features achieved in this study for six rice types.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9498175PMC
http://dx.doi.org/10.3390/foods11182723DOI Listing

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