Zhi Ruicong, Zhao Lei, Zhang Dezheng
School of Computer and Communication Engineering, University of Science and Technology Beijing, Beijing 100083, China.
Beijing Key Laboratory of Knowledge Engineering for Materials Science, Beijing 100083, China.
Sensors (Basel). 2017 May 3;17(5):1007. doi: 10.3390/s17051007.
Electronic nose (E-nose) and electronic tongue (E-tongue) can mimic the sensory perception of human smell and taste, and they are widely applied in tea quality evaluation by utilizing the fingerprints of response signals representing the overall information of tea samples. The intrinsic part of human perception is the fusion of sensors, as more information is provided comparing to the information from a single sensory organ. In this study, a framework for a multi-level fusion strategy of electronic nose and electronic tongue was proposed to enhance the tea quality prediction accuracies, by simultaneously modeling feature fusion and decision fusion. The procedure included feature-level fusion (fuse the time-domain based feature and frequency-domain based feature) and decision-level fusion (D-S evidence to combine the classification results from multiple classifiers). The experiments were conducted on tea samples collected from various tea providers with four grades. The large quantity made the quality assessment task very difficult, and the experimental results showed much better classification ability for the multi-level fusion system. The proposed algorithm could better represent the overall characteristics of tea samples for both odor and taste.
电子鼻(E-nose)和电子舌(E-tongue)能够模拟人类的嗅觉和味觉感知,通过利用代表茶叶样本整体信息的响应信号指纹,它们在茶叶品质评估中得到了广泛应用。人类感知的内在部分是传感器的融合,因为与来自单一感觉器官的信息相比,它能提供更多信息。在本研究中,提出了一种电子鼻和电子舌的多层次融合策略框架,通过同时对特征融合和决策融合进行建模,提高茶叶品质预测的准确性。该过程包括特征级融合(融合基于时域的特征和基于频域的特征)和决策级融合(利用D-S证据组合多个分类器的分类结果)。实验是在从不同茶叶供应商收集的四个等级的茶叶样本上进行的。样本数量众多使得品质评估任务非常困难,实验结果表明多层次融合系统具有更好的分类能力。所提出的算法能够更好地表征茶叶样本的气味和味道的整体特征。