Laboratory of Microbiology and Biotechnology of Foods, Department of Food Science and Human Nutrition, Agricultural University of Athens, Iera Odos 75, 11855 Athens, Greece.
Department of Electronic Engineering, University of Rome for Vergata, via del Politecnico 1, 00133 Roma, Italy.
Sensors (Basel). 2019 Sep 20;19(19):4071. doi: 10.3390/s19194071.
The performance of an Unsupervised Online feature Selection (UOS) algorithm was investigated for the selection of training features of multispectral images acquired from a dairy product (vanilla cream) stored under isothermal conditions. The selected features were further used as input in a support vector machine (SVM) model with linear kernel for the determination of the microbiological quality of vanilla cream. Model training (n = 65) was based on two batches of cream samples provided directly by the manufacturer and stored at different isothermal conditions (4, 8, 12, and 15 °C), whereas model testing (n = 132) and validation (n = 48) were based on real life conditions by analyzing samples from different retail outlets as well as expired samples from the market. Qualitative analysis was performed for the discrimination of cream samples in two microbiological quality classes based on the values of total viable counts [TVC ≤ 2.0 log CFU/g (fresh samples) and TVC ≥ 6.0 log CFU/g (spoiled samples)]. Results exhibited good performance with an overall accuracy of classification for the two classes of 91.7% for model validation. Further on, the model was extended to include the samples in the TVC range 2-6 log CFU/g, using 1 log step to define the microbiological quality of classes in order to assess the potential of the model to estimate increasing microbial populations. Results demonstrated that high rates of correct classification could be obtained in the range of 2-5 log CFU/g, whereas the percentage of erroneous classification increased in the TVC class (5,6) that was close to the spoilage level of the product. Overall, the results of this study demonstrated that the UOS algorithm in tandem with spectral data acquired from multispectral imaging could be a promising method for real-time assessment of the microbiological quality of vanilla cream samples.
本研究调查了无监督在线特征选择 (UOS) 算法在选择恒温贮藏的乳制品(香草奶油)多光谱图像训练特征方面的性能。选择的特征进一步作为输入用于支持向量机 (SVM) 模型,该模型具有线性核,用于确定香草奶油的微生物质量。模型训练(n=65)基于制造商直接提供的两批奶油样品,并在不同的恒温条件(4、8、12 和 15°C)下储存,而模型测试(n=132)和验证(n=48)则基于现实生活条件,通过分析来自不同零售店的样本以及来自市场的过期样本来进行。基于总活菌数 [TVC≤2.0 log CFU/g(新鲜样本)和 TVC≥6.0 log CFU/g(变质样本)],对两种微生物质量等级的奶油样品进行了定性分析。结果表明,对于两个等级的分类,总体准确率为 91.7%,模型验证效果良好。此外,该模型还扩展到包括 TVC 范围在 2-6 log CFU/g 的样本,使用 1 log 步长来定义等级的微生物质量,以评估模型估计微生物种群增加的潜力。结果表明,在 2-5 log CFU/g 范围内,可以获得很高的正确分类率,而在接近产品变质水平的 TVC 等级(5、6)中,错误分类的百分比增加。总体而言,本研究结果表明,UOS 算法与多光谱成像获取的光谱数据相结合,可能是实时评估香草奶油样品微生物质量的有前途的方法。