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Ensemble-based support vector machine classifiers as an efficient tool for quality assessment of beef fillets from electronic nose data

机译:基于集成的支持向量机分类器,是从电子鼻数据评估牛肉片质量的有效工具

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摘要

Over the past years, the application of electronic nose devices has been investigated as a potential tool for assessing food freshness. This relies on the application of various pattern recognition methods to provide accurate classification and regression models. The models' accuracy depends on the number of samples used during the training process. This often leads to unstable and unreliable classifiers in the case of food quality assessment, where the number of samples is typically less than 200 for a given experiment. The aim of this work is to tackle this problem through the development of a series of ensemble-based classifiers and regression models using support vector machines and electronic nose datasets based on the previously published work of this group. It was found that the developed ensemble provides a higher prediction accuracy compared to the single model approach when estimating the freshness score assigned by the sensory panel; achieving an overall accuracy of 84.1% compared to 72.7% in the case of the single classifier model. Another set of calibration ensembles were developed based on SVM-regression, in order to predict bacterial species counts, achieving an increase in the average overall performance of 85.0%, compared to 76.5% when a single classifier was applied. This increase in the predictive power therefore suggests that combining an electronic nose with ensemble-based systems can be used as an innovative method to assess the freshness of beef fillets.
机译:在过去的几年中,电子鼻装置的应用已被研究为评估食品新鲜度的潜在工具。这依赖于各种模式识别方法的应用来提供准确的分类和回归模型。模型的准确性取决于训练过程中使用的样本数量。在食品质量评估的情况下,这通常会导致分类器不稳定和不可靠,对于给定的实验而言,样本数量通常少于200个。这项工作的目的是通过使用支持向量机和基于该小组先前发表的工作的电子鼻数据集开发一系列基于集合的分类器和回归模型来解决该问题。发现在估计感官小组分配的新鲜度得分时,与单一模型方法相比,所开发的集合提供了更高的预测准确性;整体准确率达到84.1%,而单一分类器模型则为72.7%。基于SVM回归,开发了另一组校准合奏,以预测细菌的数量,与使用单个分类器时的76.5%相比,平均总体性能提高了85.0%。因此,这种预测能力的提高表明,将电子鼻与基于整体的系统结合起来可以用作评估牛肉片新鲜度的创新方法。

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