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Improving the Performance of Acoustic Event Classification by Selecting and Combining Information Sources Using the Fuzzy Integral

机译:通过使用模糊积分选择和组合信息来源来提高声学事件分类的性能

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Acoustic events produced in meeting-room-like environments may carry information useful for perceptually aware interfaces. In this paper, we focus on the problem of combining different information sources at different structural levels for classifying human vocal-tract non-speech sounds. The Fuzzy Integral (FI) approach is used to fuse outputs of several classification systems, and feature selection and ranking are carried out based on the knowledge extracted from the Fuzzy Measure (FM). In the experiments with a limited set of training data, the FI-based decision-level fusion showed a classification performance which is much higher than the one from the best single classifier and can surpass the performance resulting from the integration at the feature-level by Support Vector Machines. Although only fusion of audio information sources is considered in this work, the conclusions may be extensible to the multi-modal case.
机译:在会议室的环境中产生的声学事件可以携带对感知上的信息有用的信息。在本文中,我们专注于结合不同信息源在不同结构水平的问题,以分类人类声道非语音声音。模糊积分(FI)方法用于熔断若干分类系统的输出,并且基于从模糊测量(FM)提取的知识来执行特征选择和排序。在具有有限培训数据集合的实验中,基于FI的决策级别融合显示了分类性能,远远高于来自最佳单分类器的分类性能,并且可以超越特征级集成导致的性能支持矢量机器。尽管在这项工作中仅考虑了音频信息源的融合,但是该结论可以是可扩展的多模态案例。

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