食品科学 ›› 2022, Vol. 43 ›› Issue (23): 41-48.doi: 10.7506/spkx1002-6630-20211125-312

• 基础研究 • 上一篇    下一篇

机器学习结合视触多感知特征融合的盐渍海参等级评定方法

朱鑫宇,康家铭,邵卫东,刘阳,张旭,杨继新,王慧慧   

  1. (1.大连工业大学机械工程及自动化学院,辽宁 大连 116034;2.国家海洋食品工程技术研究中心,辽宁 大连 116034;3.大连工业大学食品交叉科学研究院,辽宁 大连 116034)
  • 出版日期:2022-12-15 发布日期:2022-12-28
  • 基金资助:
    大连市科技创新基金项目(2021JJ13SN85);国家自然科学基金青年科学基金项目(31701696); 辽宁省教育厅2021年度科学研究经费项目(LJKZ0511;LJKZ0542)

Machine Learning Combined with Multi-Feature Fusion of Vision and Tactile Sensation for Quality Grade Evaluation of Salted Sea Cucumber

ZHU Xinyu, KANG Jiaming, SHAO Weidong, LIU Yang, ZHANG Xu, YANG Jixin, WANG Huihui   

  1. (1. School of Mechanical Engineering & Automation, Dalian Polytechnic University, Dalian 116034, China;2. National Engineering Research Center of Seafood, Dalian 116034, China;3. Cross Science of Food, Dalian Polytechnic University, Dalian 116034, China)
  • Online:2022-12-15 Published:2022-12-28

摘要: 盐渍海参等级评定结果直接影响海参的经济价值,不同等级盐渍海参在颜色、形态和气味上很难直接分辨。现有的检测方法具有线下分散性操作以及依赖人工经验的特点,无法满足大规模生产线作业要求。为实现快速、无损的盐渍海参等级评定,本实验提出一种基于视觉、力学多感知特征融合的盐渍海参等级评定新方法。鉴于海参含盐量与质构特性的复杂关系,本实验利用构建的盐渍海参等级评定系统感知盐渍海参受力回复过程的形变图像与力学信息;通过回复过程形状变化特点与力学特征,结合机器学习算法实现盐渍海参等级评定。为精确提取与海参形状变化相关的图像特征,在传统图像处理方法基础上进行改进,建立盐渍海参轮廓动态能量图,提取基于直方图和灰度共生矩阵的纹理特征;针对力学信息,提取力学统计特征,采用单因素方差分析、主成分分析法对所有特征数据进行降维和融合,获得视触多感知融合特征,根据融合数据特点,采用遗传算法优化支持向量机建立盐渍海参等级评定模型。结果表明,特征融合后结合支持向量机模型检测效果优异,该模型的准确度(Accuracy)=1、精确率(Precision)=1、召回率(Recall)=1、综合评价指标(F1-Score)=1。一级品、二级品、合格品盐渍海参分类识别准确率可达100%。该方法可为盐渍海参等级评定提出新的思路。

关键词: 盐渍海参;视触多感知;动态能量图;力学特征;机器学习

Abstract: The results of quality grade evaluation of salted sea cucumber have a direct effect on its economic value. It is difficult to distinguish different grades of salted sea cucumber according to their color, shape and smell. The existing detection methods, which are characterized by offline decentralized operation and dependence on manual experience, cannot meet the requirements of large-scale production lines. A new multi-sensory feature fusion method based on machine visual and mechanical features was proposed for rapid and nondestructive quality grade evaluation of salted sea cucumber in this study. In view of the complex relationship between the salt content and texture properties of sea cucumber, the mechanical information and deformation images of sea cucumber during the stress recovery process were perceived by the quality grade evaluation system developed. The quality grade evaluation of salted sea cucumber was realized by using machine learning algorithm. In order to accurately extract image features related to the change of sea cucumber contours, the traditional image processing method was improved to establish a dynamic energy map for sea cucumber contours. Then, texture features were extracted by histogram (HIS) and gray-level co-occurrence matrix (GLCM). For mechanical information, mechanical statistical features were extracted. All feature data were subjected to dimensionality reduction and fusion by one-way analysis of variance (ANOVA) and principal component analysis (PCA) to obtain the multi-feature fusion of vision and tactile sensation. According to the characteristics of the fused data, the genetic algorithm (GA) was used to optimize the support vector machine (SVM) to establish a grade evaluation model. It was shown that the SVM model had excellent performance, with Accuracy = 1, Precision = 1, Recall = 1, F1-score = 1. The identification accuracy for first-grade, second-grade and qualified salted sea cucumber were all 100%. This method provides a new idea for the grade evaluation of salted sea cucumber.

Key words: salted sea cucumber; vision and tactile sensation; dynamic energy map; mechanical characteristics; machine learning

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