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Pooling Robust Shift-Invariant Sparse Representations of Acoustic Signals

机译:汇集强大的移位 - 不变稀疏表示声学信号

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In recent years, designing the coding and pooling structures in layered networks has been shown to be a useful method for learning high-level feature representations for visual data. Yet, such learning structures have not been extensively studied for audio signals. In this paper, we investigate different pooling strategies based on the sparse coding scheme and propose a temporal pyramid pooling method to extract discriminative and shiftinvariant feature representations. "We demonstrate the superiority of our new feature representation over traditional features on the acoustic event classification task.
机译:近年来,在分层网络中设计了编码和汇集结构,已被证明是用于学习用于视觉数据的高级特征表示的有用方法。然而,这种学习结构尚未对音频信号进行广泛研究。在本文中,我们基于稀疏编码方案调查不同的汇集策略,并提出了一种临时金字塔汇集方法来提取判别和换班variant特征表示。 “我们展示了对声学事件分类任务的传统功能的新功能表示的优势。

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