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Acoustic event detection based on non-negative matrix factorization with mixtures of local dictionaries and activation aggregation

机译:基于非负矩阵分解并结合本地字典和激活聚合的声音事件检测

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This paper proposes a new non-negative matrix factorization (NMF) based acoustic event detection (AED) method with mixtures of local dictionaries (MLD) and activation aggregation. One of the key problems of conventional NMF-based methods is instability of activations due to redundancy of a region spanned by the bases of dictionaries. Sounds inside the redundant region are often decomposed into undesired combinations of bases and activations that cause failure of detection. The proposed method employs MLD for allocating sub-groups of basis dictionaries to acoustic elements to minimize redundancy in the region and obtain controlled activations. In order to make activations more stable, the proposed method also introduces activation aggregation which combines basis-wise activations into acoustic-element-wise activations. Much more stable activations by the proposed method lead to significant improvement in F-measure by up to 60% compared to an ordinary convolutive-NMF-based method. The proposed method also outperforms a latest alternative which is not based on NMF.
机译:本文提出了一种新的基于非负矩阵分解(NMF)的声音事件检测(AED)方法,该方法结合了本地字典(MLD)和激活聚合。传统的基于NMF的方法的关键问题之一是由于字典基跨过的区域的冗余而导致的激活不稳定。冗余区域内的声音通常会分解为不受欢迎的碱基和激活组合,从而导致检测失败。所提出的方法采用MLD将基本字典的子组分配给声学元件,以最大程度地减少该区域中的冗余并获得受控的激活。为了使激活更加稳定,所提出的方法还引入了激活聚合,该聚合将基本激活与声元素激活结合在一起。与基于卷积NMF的常规方法相比,通过所提出的方法进行的更稳定的激活可显着提高F值,最多可提高60%。所提出的方法也优于不基于NMF的最新替代方法。

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