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中国精品科技期刊2020
王博,胡晓妍,于芳珠,等. 基于机器视觉技术制作烤羊肉比色卡[J]. 食品工业科技,2022,43(3):10−17. doi: 10.13386/j.issn1002-0306.2021070346.
引用本文: 王博,胡晓妍,于芳珠,等. 基于机器视觉技术制作烤羊肉比色卡[J]. 食品工业科技,2022,43(3):10−17. doi: 10.13386/j.issn1002-0306.2021070346.
WANG Bo, HU Xiaoyan, YU Fangzhu, et al. Making Roasted Mutton Colourimetric Card Based on Machine Vision Technology[J]. Science and Technology of Food Industry, 2022, 43(3): 10−17. (in Chinese with English abstract). doi: 10.13386/j.issn1002-0306.2021070346.
Citation: WANG Bo, HU Xiaoyan, YU Fangzhu, et al. Making Roasted Mutton Colourimetric Card Based on Machine Vision Technology[J]. Science and Technology of Food Industry, 2022, 43(3): 10−17. (in Chinese with English abstract). doi: 10.13386/j.issn1002-0306.2021070346.

基于机器视觉技术制作烤羊肉比色卡

Making Roasted Mutton Colourimetric Card Based on Machine Vision Technology

  • 摘要: 为建立一种能够快速无损识别羊肉烤制过程中颜色变化的标准化方法,本研究基于机器视觉技术结合三种算法(均值算法、K-Means算法和K-Means+图像降噪算法)制作烤羊肉颜色识别比色卡,对烤羊肉的颜色进行在线监测。结果表明,三种算法制作的比色卡均能呈现出羊肉烤制过程中的颜色变化。为明确三种比色卡的准确率,研究采用K-medoids算法结合感官实验进行比色卡颜色识别准确率验证。其中利用K-medoids算法的比色卡识别准确率验证结果显示,均值算法准确率为85.60%、K-Means算法准确率为95.70%、K-Means算法+图像降噪算法准确率为93.40%;感官实验的验证结果显示,均值算法、K-Means算法、K-Means算法+图像降噪算法的识别准确率依次为67.32%、73.71%、68.74%,对比发现K-Means算法制作的比色卡对烤羊肉颜色识别准确率最高。研究证明比色卡可作为颜色评价标准,为烧烤肉制品加工提供指导依据,具有良好的应用前景。

     

    Abstract: In order to establish a standardized method that can quickly and nondestructively identify the color changes in the process of mutton roasting, this study combined three algorithms (mean value algorithm, K-means algorithm and K-means+image noise reduction algorithm) based on machine vision technology to make the color recognition colourimetric card and carried out online monitoring of the color of roasted mutton. The results showed that the colorimetric cards made by the three algorithms could show the color changes in the process of mutton roasting. In order to clarify the accuracy of the three colorimetric cards, K-medoids algorithm combined with sensory experiment was used to verify the accuracy of color recognition of the colorimetric cards. The verification results of colourimetric card recognition accuracy using K-medoids algorithm showed that the accuracy of mean algorithm was 85.60%, that of K-means algorithm was 95.70%, and that of K-means algorithm+image noise reduction algorithm was 93.40%. The verification results of sensory experiments showed that the recognition accuracy of mean algorithm, K-means algorithm and K-means algorithm+image noise reduction algorithm were 67.32%, 73.71% and 68.74% respectively, the comparison showed that the color recognition accuracy of colourimetric card made by K-means algorithm was the highest for roasted mutton. The study proved that the colorimetric card can be used as the color evaluation criterion and provides guidance for barbecue meat processing. It had a good application prospect.

     

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