Department of Agricultural Engineering, National Institute of Agricultural Sciences, 310 Nongsaengmyeong-ro, Deokjin-gu, Jeonju 54875, Korea.
Department of Biosystems Engineering, Kangwon National University, 1 Kangwondaehak-gil, Chuncheon 24341, Gangwon-do, Korea.
Sensors (Basel). 2021 Apr 21;21(9):2899. doi: 10.3390/s21092899.
Contamination is a critical issue that affects food consumption adversely. Therefore, efficient detection and classification of food contaminants are essential to ensure food safety. This study applied a visible and near-infrared (VNIR) hyperspectral imaging technique to detect and classify organic residues on the metallic surfaces of food processing machinery. The experimental analysis was performed by diluting both potato and spinach juices to six different concentration levels using distilled water. The 3D hypercube data were acquired in the range of 400-1000 nm using a line-scan VNIR hyperspectral imaging system. Each diluted residue in the spectral domain was detected and classified using six classification methods, including a 1D convolutional neural network (CNN-1D) and five pre-processing methods. Among them, CNN-1D exhibited the highest classification accuracy, with a 0.99 and 0.98 calibration result and a 0.94 validation result for both spinach and potato residues. Therefore, in comparison with the validation accuracy of the support vector machine classifier (0.9 and 0.92 for spinach and potato, respectively), the CNN-1D technique demonstrated improved performance. Hence, the VNIR hyperspectral imaging technique with deep learning can potentially afford rapid and non-destructive detection and classification of organic residues in food facilities.
污染是一个严重的问题,会对食品消费产生不利影响。因此,高效检测和分类食品污染物对于确保食品安全至关重要。本研究应用可见近红外(VNIR)高光谱成像技术检测和分类食品加工机械金属表面的有机残留物。通过使用蒸馏水将土豆和菠菜汁稀释到六个不同的浓度水平来进行实验分析。使用线扫描 VNIR 高光谱成像系统在 400-1000nm 的范围内采集 3D 超立方数据。在光谱域中使用六种分类方法(包括一维卷积神经网络(CNN-1D)和五种预处理方法)检测和分类每个稀释的残留物。其中,CNN-1D 表现出最高的分类准确性,对菠菜和土豆残留物的校准结果分别为 0.99 和 0.98,验证结果分别为 0.94。因此,与支持向量机分类器的验证准确性(菠菜和土豆分别为 0.9 和 0.92)相比,CNN-1D 技术的性能得到了提高。因此,具有深度学习功能的 VNIR 高光谱成像技术有望实现食品设施中有机残留物的快速、无损检测和分类。