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Acoustic vehicle classification by fusing with semantic annotation

机译:用语义注释融合声学车辆分类

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Current research on acoustic vehicle classification has been generally aimed at utilizing various feature extraction methods and pattern recognition techniques. Previous research in gait biometrics has shown that domain knowledge or semantic enrichment can assist in improving the classification accuracy. In this paper, we address the problem of semantic enrichment by learning the semantic attributes from the training set, and then formalize the domain knowledge by using ontologies. We first consider a simple data ontology, and discuss how to use it for classification. Next we propose a scheme, which uses a semantic attribute to mediate information fusion for acoustic vehicle classification. To assess the proposed approaches, experiments are carried out based on a data set containing acoustic signals from five types of vehicles. Results indicate that whether the above semantic enrichment can lead to improvement depends on the accuracy of semantic annotation. Among the two enrichment schemes, semantically mediated information fusion achieves less significant improvement, but is insensitive to the annotation error.
机译:目前关于声学车辆分类的研究通常旨在利用各种特征提取方法和模式识别技术。以前的步态生物识别研究表明,域名知识或语义富集可以帮助提高分类准确性。在本文中,我们通过从训练集中学习语义属性来解决语义浓缩问题,然后使用本体进行正式化域知识。我们首先考虑一个简单的数据本体论,并讨论如何将其用于分类。接下来,我们提出了一种方案,它使用语义属性来调解信息融合的声学车辆分类。为了评估所提出的方法,基于包含来自五种车辆的声学信号的数据集进行实验。结果表明上述语义富集是否会导致改进取决于语义注释的准确性。在两个浓缩方案中,语义介导的信息融合实现了不太显着的改进,但对注释误差不敏感。

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