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Partitioning of prosodic features for audio similarity comparison.

机译:对韵律特征进行分区以进行音频相似度比较。

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摘要

Multiple methods for partitioning space for use in comparing audio samples using prosodic features are examined and researched. Specific prosodic features are chosen for use within an online system that will allow for users to submit audio clips and receive matches. The audio requires processing before being input to the system which is comprised of multiple steps. Existing methodologies using classifier systems requiring classifier training are discussed and deemed unsuitable for this application. The partitioning of extracted features into representative points or regions in the search space is focused on, with 2 approaches. k-means clustering with multiple different validity measures is examined as well as vector quantization using a scalar quantizer. Experimental results show that clustering is ill-suited for use and finding a good k is unlikely. A scalar quantizer is implemented based on its ability to effectively quantize the space without changing how the space is discretized. It is also concluded that a method to trim the input data to reduce the codebook size of the quantizer is not inherently better, yielding more representative points compared to using all the input data.
机译:审查和研究了用于划分空间的多种方法,以比较使用韵律特征的音频样本。选择了特定的韵律功能以供在线系统使用,这些功能将允许用户提交音频剪辑并接收匹配。音频在输入到系统之前需要进行处理,该过程由多个步骤组成。讨论了使用需要分类器训练的分类器系统的现有方法,并且认为该方法不适用于此应用程序。使用2种方法着重于将提取的特征划分为搜索空间中的代表性点或区域。检查了具有多种不同有效性度量的k均值聚类,以及使用标量量化器的矢量量化。实验结果表明,聚类不适合使用,不可能找到一个好的k。标量量化器是基于其有效量化空间而不改变空间离散方式的能力而实现的。还得出结论,修整输入数据以减小量化器的码本大小的方法本质上不是更好,与使用所有输入数据相比,产生了更多的代表点。

著录项

  • 作者

    Geimer, Matthew Steven.;

  • 作者单位

    Michigan State University.;

  • 授予单位 Michigan State University.;
  • 学科 Computer Science.
  • 学位 M.S.
  • 年度 2010
  • 页码 41 p.
  • 总页数 41
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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