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Prediction of Pork Meat Total Viable Bacteria Count Using Hyperspectral Imaging System and Support Vector Machines

机译:使用高光谱成像系统预测猪肉总活性细菌数量和支持向量机

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If the total viable count (TVC) of bacteria in meat outnumbers certain number, it will become pathogenic bacteria. The paper is to explore the potential of hyperspectral imaging system based on support vector machines (SVM's) for the detection of TVCof bacteria in pork meat. After the hyperspectral reflectance images were acquired and pre-processed, stepwise discrimination method was then performed to determine the optimal wavelengths which can characterize the gross change of TVC of pork meat. Thefive optimal wavelengths (480nm, 525nm, 650nm, 720nmand 765nm) covered a relatively large spectral range and accounted for about 94% of the total contribution to TVC prediction. In order to predict the TVC of pork meat, least square support vector machines (LS-SVM) was adopted as the modeling method, also to render the LS-SVM to exhibit best performance, 2 inferences within Bayesian evidence framework were employed to optimize its parameters. The prediction model based on the optimal five wavelengths was able to predict TVC with r = 0.87 and the result was considerably better than that of ANNs and MLR method. This research demonstrated the feasibility of using the hyperspectral imaging system coupled with the modeling method based on LS-SVM is a validmeans for nondestructive determination of TVC ofpork meat.
机译:如果肉中细菌的总活菌数(TVC)租税一定数量时,它会成为致病菌。纸张是探索基于支持向量机高光谱成像系统,用于猪肉检测TVCof细菌的潜力(SVM的)。高光谱反射图像获得并预先处理后,然后进行逐步判别方法以确定最佳的波长可以表征TVC的猪肉的总变化。 Thefive最佳波长(480nm波长,525nm处,为650nm,765nm 720nmand)覆盖的相对大的光谱范围内,占到TVC预测的总贡献的约94%。为了预测猪肉的TVC,最小二乘支持向量机(LS-SVM)被采纳为建模方法,还以使LS-SVM表现出最好的性能,贝叶斯证据框架2点的推论被用于优化其参数。基于最优五种波长的预测模型能够预测TVC其中r = 0.87,结果是显着地好于人工神经网络和MLR方法。这项研究证明了使用加上基于所述建模方法的高光谱成像系统的可行性LS-SVM是无损判定TVC ofpork肉validmeans。

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