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Evaluating green tea quality based on multisensor data fusion combining hyperspectral imaging and olfactory visualization systems

机译:基于多传感器数据融合的绿茶质量相结合高光谱成像和嗅觉可视化系统

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BACKGROUND The instrumental evaluation of tea quality using digital sensors instead of human panel tests has attracted much attention globally. However, individual sensors do not meet the requirements of discriminant accuracy as a result of incomprehensive sensor information. Considering the major factors in the sensory evaluation of tea, the study integrated multisensor information, including spectral, image and olfaction feature information. RESULTS To investigate spectral and image information obtained from hyperspectral spectrometers of different bands, principal components analysis was used for dimension reduction and different types of supervised learning algorithms (linear discriminant analysis, K-nearest neighbour and support vector machine) were selected for comparison. Spectral feature information in the near infrared region and image feature information in the visible-near infrared/near infrared region achieved greater accuracy for classification. The results indicated that a support vector machine outperformed other methods with respect to multisensor data fusion, which improved the accuracy of evaluating green tea quality compared to using individual sensor data. The overall accuracy of the calibration set increased from 75% using optimal single sensor information to 92% using multisensor information, and the overall accuracy of the prediction set increased from 78% to 92%. CONCLUSION Overall, it can be concluded that multisensory data accurately identify six grades of tea. (c) 2018 Society of Chemical Industry
机译:背景技术使用数字传感器而不是人类面板测试的茶度质量的乐器评估引起了全球的许多关注。然而,由于传感器信息的结果,各个传感器不符合判别精度的要求。考虑到茶叶感官评估中的主要因素,研究集成了多传感器信息,包括光谱,图像和嗅觉特征信息。结果研究从不同频带的高光谱光谱仪获得的光谱和图像信息,主要成分分析用于尺寸减少,选择不同类型的监督学习算法(线性判别分析,K最近邻居和支持向量机)进行比较。近红外区域和可见近红外/近红外区域中的图像特征信息中的光谱特征信息实现了更大的分类精度。结果表明,支持向量机相对于多传感器数据融合的方式表现出其他方法,这提高了与使用单独的传感器数据相比评估绿茶质量的准确性。使用多传感器信息,使用最佳单个传感器信息的校准集的整体精度从75%增加到92%,预测集的总精确度从78%增加到92%。结论总体而言,可以得出结论,多思级数据准确识别六等级的茶叶。 (c)2018化学工业协会

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