首页> 外文期刊>PLoS One >Exploring the distribution of statistical feature parameters for natural sound textures
【24h】

Exploring the distribution of statistical feature parameters for natural sound textures

机译:探索自然声音纹理统计特征参数的分布

获取原文
           

摘要

Sounds like “running water” and “buzzing bees” are classes of sounds which are a collective result of many similar acoustic events and are known as “sound textures”. A recent psychoacoustic study using sound textures has reported that natural sounding textures can be synthesized from white noise by imposing statistical features such as marginals and correlations computed from the outputs of cochlear models responding to the textures. The outputs being the envelopes of bandpass filter responses, the ‘cochlear envelope’. This suggests that the perceptual qualities of many natural sounds derive directly from such statistical features, and raises the question of how these statistical features are distributed in the acoustic environment. To address this question, we collected a corpus of 200 sound textures from public online sources and analyzed the distributions of the textures’ marginal statistics (mean, variance, skew, and kurtosis), cross-frequency correlations and modulation power statistics. A principal component analysis of these parameters revealed a great deal of redundancy in the texture parameters. For example, just two marginal principal components, which can be thought of as measuring the sparseness or burstiness of a texture, capture as much as 64% of the variance of the 128 dimensional marginal parameter space, while the first two principal components of cochlear correlations capture as much as 88% of the variance in the 496 correlation parameters. Knowledge of the statistical distributions documented here may help guide the choice of acoustic stimuli with high ecological validity in future research.
机译:听起来像“自来水”和“嗡嗡的蜜蜂”是声音的类,这是许多类似的声学事件的集体结果,并且被称为“声音纹理”。最近使用声音纹理的心理声学研究报告说,通过施加从响应于纹理的耳蜗模型的输出计算的统计特征,可以通过强加统计特征来从白噪声合成天然探测纹理。输出是带通滤波器响应的信封,“耳蜗信封”。这表明许多自然声音的感知品质直接从这些统计特征中获得,并提出了如何在声学环境中分布这些统计特征的问题。为了解决这个问题,我们从公共在线来源收集了200个声音纹理的语料库,并分析了纹理边缘统计的分布(平均,方差,歪斜和峰氏刺激),跨频相关和调制功率统计。这些参数的主要成分分析显示了纹理参数中的大量冗余。例如,只有两个边缘主成分,可以被认为是测量纹理的稀疏或突发,捕获128维边缘参数空间的差异的64%,而耳蜗相关的前两个主要成分在496个相关参数中捕获多达88%的差异。在此记录的统计分布知识可能有助于指导在未来研究中具有高生态有效性的声学刺激。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号