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Informative Acoustic Feature Selection to Maximize Mutual Information for Collecting Target Sources

机译:信息性声学特征选择,可最大限度地利用相互信息来收集目标源

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摘要

An informative acoustic-feature-selection method for collecting target sources in noisy environments is proposed. Wiener filtering is a powerful framework for sound-source enhancement. For Wiener-filter estimation, statistical-mapping functions, such as deep neural network based or Gaussian mixture model based mappings, have been used. In this framework, it is essential to find informative acoustic features that provide effective cues for Wiener-filter estimation. In this study, we measured the informativeness of acoustic features using mutual information between acoustic features and supervised Wiener-filter parameters, e.g., prior signal-to-noise ratios, and developed a method for automatically selecting informative acoustic features from a large number of feature candidates. To automatically select optimum features, we derived a differentiable objective function in proportion to mutual information based on the kernel method. Since the higher order correlations between acoustic features and Wiener-filter parameters are calculated using the kernel method, the statistical dependence of these variables is accurately calculated; thus, only meaningful acoustic features are selected. Through several experiments conducted on a mock sports field, we confirmed that the signal-to-distortion ratio score improved when various types of target sources were surrounded by loud cheering noise.
机译:提出了一种用于在嘈杂环境中收集目标源的信息丰富的声学特征选择方法。维纳滤波是用于增强声源的强大框架。对于维纳滤波器估计,已使用统计映射功能,例如基于深度神经网络或基于高斯混合模型的映射。在此框架中,至关重要的是找到能够为维纳滤波器估计提供有效线索的信息声学特征。在这项研究中,我们使用声学特征和监督的Wiener滤波器参数之间的互信息(例如,先验信噪比)来测量声学特征的信息性,并开发了一种从大量特征中自动选择信息性声学特征的方法候选人。为了自动选择最佳特征,我们基于核方法与互信息成比例地推导了可微分的目标函数。由于使用核方法计算声学特征和维纳滤波器参数之间的高阶相关性,因此可以精确计算这些变量的统计相关性;因此,仅选择有意义的声学特征。通过在模拟运动场上进行的几次实验,我们确认,当各种类型的目标源被大声的欢呼声包围时,信噪比得分会提高。

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