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Kernel multi-metric learning for multi-channel transient acoustic signal classification

机译:核多度量学习,用于多通道瞬态声信号分​​类

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In this paper, we propose a kernel multi-metric learning algorithm for multi-channel transient acoustic signal classification. The proposed method learns a set of metrics jointly for multi-channel transient acoustic signals in a kernel-induced feature space to exploit the non-linearity of the data for improving the classification performance. An effective algorithm is developed for the task of learning multiple metrics in the kernel space. By learning the multiple metrics jointly within a single unified optimization framework, we can learn better metrics to integrate the multiple channels of the signal for a joint classification. Experimental results compared with classical as well as recent algorithms on real-world acoustic datasets verified the effectiveness of the proposed method.
机译:在本文中,我们提出了一种用于多通道瞬态声信号分​​类的内核多度量学习算法。所提出的方法为核诱导特征空间中的多通道瞬态声信号联合学习一组度量,以利用数据的非线性来提高分类性能。针对学习内核空间中的多个度量的任务,开发了一种有效的算法。通过在一个统一的优化框架内共同学习多个指标,我们可以学习更好的指标以整合信号的多个通道以进行联合分类。实验结果与经典以及最新算法在现实世界中的声音数据集进行了比较,证明了该方法的有效性。

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