基于关节结构稀疏度的多测量瞬态声信号分类。

Haichao Zhang, Yanning Zhang, Nasser M Nasrabadi, Thomas S Huang
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引用次数: 27

摘要

研究了基于关节结构稀疏度的多测量瞬态声信号分类方法。通过联合结构化稀疏性,我们不仅利用了每次测量的先验稀疏性,而且还利用了多个测量的稀疏表示向量之间的结构信息。本文研究了几种不同的稀疏先验模型,利用联合结构稀疏度的概念,利用多个测量值之间的相关性来提高分类精度。具体来说,我们提出了在不同假设下具有联合结构化稀疏性的模型:相同稀疏代码模型、公共稀疏模式模型和新提出的联合动态稀疏模型。对于联合动态稀疏模型,我们还开发了一种高效的贪心算法来求解。在实际声学数据集上进行了大量的实验,并将实验结果与传统的判别分类器进行了比较,以验证所提方法的有效性。
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Joint-structured-sparsity-based classification for multiple-measurement transient acoustic signals.

This paper investigates the joint-structured-sparsity-based methods for transient acoustic signal classification with multiple measurements. By joint structured sparsity, we not only use the sparsity prior for each measurement but we also exploit the structural information across the sparse representation vectors of multiple measurements. Several different sparse prior models are investigated in this paper to exploit the correlations among the multiple measurements with the notion of the joint structured sparsity for improving the classification accuracy. Specifically, we propose models with the joint structured sparsity under different assumptions: same sparse code model, common sparse pattern model, and a newly proposed joint dynamic sparse model. For the joint dynamic sparse model, we also develop an efficient greedy algorithm to solve it. Extensive experiments are carried out on real acoustic data sets, and the results are compared with the conventional discriminative classifiers in order to verify the effectiveness of the proposed method.

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