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Classification of beverages using electronic nose and machine vision systems

机译:使用电子鼻和机器视觉系统对饮料进行分类

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In this work, the classification of beverages was conducted using three approaches: by using the electronic nose alone, by using the machine vision alone and by using the combination of electronic nose and machine vision. A total of two hundred and twenty eight beverages from fifteen different brands were used in this classification problem. A supervised Support Vector Machine was used to classify beverages according to their brands. Results show that by using the electronic nose alone and the machine vision alone were able to respectively classify 73.7% and 92.9% of the beverages correctly. When combining the electronic nose and the machine vision, the classification accuracy increased to 96.6%. Based on the results, it can be concluded that the combination of the electronic nose and machine vision is able to extract more information from the sample, hence improving the classification accuracy.
机译:在这项工作中,使用三种方法对饮料进行分类:单独使用电子鼻,单独使用机器视觉以及结合使用电子鼻和机器视觉。这个分类问题中总共使用了来自15个不同品牌的228种饮料。使用监督的支持向量机将饮料根据其品牌进行分类。结果表明,仅使用电子鼻和单独使用机器视觉就可以分别正确地对73.7%和92.9%的饮料进行分类。当结合电子鼻和机器视觉时,分类精度提高到96.6%。根据结果​​,可以得出结论,电子鼻和机器视觉的组合能够从样本中提取更多信息,从而提高了分类准确性。

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