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Similarity induced group sparsity for non-negative matrix factorisation

机译:非负矩阵分解的相似度诱导群稀疏性

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Non-negative matrix factorisations are used in several branches of signal processing and data analysis for separation and classification. Sparsity constraints are commonly set on the model to promote discovery of a small number of dominant patterns. In group sparse models, atoms considered to belong to a consistent group are permitted to activate together, while activations across groups are suppressed, reducing the number of simultaneously active sources or other structures. Whereas most group sparse models require explicit division of atoms into separate groups without addressing their mutual relations, we propose a constraint that permits dynamic relationships between atoms or groups, based on any defined distance measure. The resulting solutions promote approximation with components considered similar to each other. Evaluation results are shown for speech enhancement and noise robust speech and speaker recognition.
机译:非负矩阵分解用于信号处理和数据分析的多个分支中,以进行分离和分类。通常在模型上设置稀疏约束,以促进发现少量主导模式。在基团稀疏模型中,允许将被认为属于一个恒定基团的原子一起激活,同时抑制跨基团的激活,从而减少了同时激活的源或其他结构的数量。尽管大多数稀疏模型都需要将原子显式划分为单独的组,而无需解决它们之间的相互关系,但我们基于任何已定义的距离度量,提出了一个允许原子或组之间建立动态关系的约束。所得的解决方案通过考虑彼此相似的组件来促进近似。评估结果显示了语音增强,鲁棒的语音和说话人识别能力。

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