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A Comprehensive Method for Assessing Meat Freshness Using Fusing Electronic Nose, Computer Vision, and Artificial Tactile Technologies

机译:使用熔断电子鼻,电脑视觉和人工触觉技术评估肉类新鲜度的综合方法

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The traditional methods cannot be used to meet the requirements of rapid and objective detection of meat freshness. Electronic nose (E-Nose), computer vision (CV), and artificial tactile (AT) sensory technologies can be used to mimic humans’ compressive sensory functions of smell, look, and touch when making judgement of meat quality (freshness). Though individual E-Nose, CV, and AT sensory technologies have been used to detect the meat freshness, the detection results vary and are not reliable. In this paper, a new method has been proposed through the integration of E-Nose, CV, and AT sensory technologies for capturing comprehensive meat freshness parameters and the data fusion method for analysing the complicated data with different dimensions and units of six odour parameters of E-Nose, 9 colour parameters of CV, and 4 rubbery parameters of AT for effective meat freshness detection. The pork and chicken meats have been selected for a validation test. The total volatile base nitrogen (TVB-N) assays are used to define meat freshness as the standard criteria for validating the effectiveness of the proposed method. The principal component analysis (PCA) and support vector machine (SVM) are used as unsupervised and supervised pattern recognition methods to analyse the source data and the fusion data of the three instruments, respectively. The experimental and data analysis results show that compared to a single technology, the fusion of E-Nose, CV, and AT technologies significantly improves the detection performance of various freshness meat products. In addition, partial least squares (PLS) is used to construct TVB-N value prediction models, in which the fusion data is input. The root mean square error predictions (RMSEP) for the sample pork and chicken meats are 1.21 and 0.98, respectively, in which the coefficient of determination (R2) is 0.91 and 0.94. This means that the proposed method can be used to effectively detect meat freshness and the storage time (days).
机译:传统方法不能用于满足肉类新鲜的快速和客观检测的要求。电子鼻子(E-鼻子),计算机视觉(CV)和人造触觉(AT)感官技术可用于模拟人类的嗅觉,看起来和触摸肉质的肉质(清新)。虽然单独的电子鼻,CV和感官技术已经用于检测肉类新鲜度,但检测结果变化并且不可靠。在本文中,通过整合E-鼻子,CV和感官技术来提出了一种新方法,用于捕获综合肉类新鲜度参数和数据融合方法,用于分析具有不同尺寸和六个气味参数的不同尺寸和单位的复杂数据E-鼻子,9种颜色参数的CV,以及4个橡胶型参数,用于有效肉类新鲜度检测。猪肉和鸡肉已被选择用于验证测试。总挥发性碱氮(TVB-N)测定用于将肉清洁定义为验证所提出的方法的有效性的标准标准。主成分分析(PCA)和支持向量机(SVM)用作无监督和监督的模式识别方法,分别分析三种仪器的源数据和融合数据。实验和数据分析结果表明,与单一技术相比,电子鼻,简历和技术的融合显着提高了各种新鲜肉类产品的检测性能。另外,部分最小二乘(PLS)用于构建TVB-N值预测模型,其中输入融合数据。样品猪肉和鸡肉的根均方误差预测(RMSEP)分别为1.21和0.98,其中测定系数(R2)为0.91和0.94。这意味着所提出的方法可用于有效地检测肉类新鲜度和储存时间(天)。

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