College of Mechanical and Electrical Engineering, Shihezi University, Shihezi, 832003 Xinjiang, China.
College of Mechanical and Electrical Engineering, Shihezi University, Shihezi, 832003 Xinjiang, China.
Meat Sci. 2022 Oct;192:108900. doi: 10.1016/j.meatsci.2022.108900. Epub 2022 Jun 23.
This paper presented a method to detect adulterated mutton using recurrence plot transformed by spectrum combined with convolutional neural network (RP-CNN). For this, 100 adulterated samples of mutton mixed with different proportions (0.5-1-2-5-10% (w/w)) of pork and 20 pure mutton samples were prepared. The results of the classification model of adulterated mutton and the quantitative prediction model of pork content established by this method were comparable for fresh, frozen-thawed and mixed datasets. It shows that the classification accuracies of adulteration mutton on three datasets were 100.00%, 100.00% and 99.95% respectively. Moreover, for the pork content prediction of adulterated mutton, the R on three datasets of fresh, frozen-thawed and mixed samples were 0.9762, 0.9807 and 0.9479, respectively. Therefore, the hyperspectral combined with RP-CNN proposed in this paper shows great potential in the classification of adulterated mutton and the pork content prediction of adulterated mutton.
本文提出了一种使用谱结合卷积神经网络(RP-CNN)变换的递归图检测掺假羊肉的方法。为此,制备了 100 个掺有不同比例(0.5-1-2-5-10%(w/w))猪肉的掺假羊肉样品和 20 个纯羊肉样品。该方法建立的掺假羊肉分类模型和猪肉含量定量预测模型的结果在新鲜、冷冻和解冻以及混合数据集上具有可比性。结果表明,三种数据集上掺假羊肉的分类准确率分别为 100.00%、100.00%和 99.95%。此外,对于掺假羊肉中猪肉含量的预测,新鲜、冷冻和解冻三种数据集的 R 分别为 0.9762、0.9807 和 0.9479。因此,本文提出的高光谱结合 RP-CNN 在掺假羊肉的分类和掺假羊肉中猪肉含量的预测方面具有很大的潜力。