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Outcome measures based on classification performance fail to predict the intelligibility of binary-masked speech

机译:基于分类性能的结果测量无法预测二进制掩码语音的可懂度

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摘要

To date, the most commonly used outcome measure for assessing ideal binary mask estimation algorithms is based on the difference between the hit rate and the false alarm rate (H-FA). Recently, the error distribution has been shown to substantially affect intelligibility. However, H-FA treats each mask unit independently and does not take into account how errors are distributed. Alternatively, algorithms can be evaluated with the short-time objective intelligibility (STOI) metric using the reconstructed speech. This study investigates the ability of H-FA and STOI to predict intelligibility for binary-masked speech using masks with different error distributions. The results demonstrate the inability of H-FA to predict the behavioral intelligibility and also illustrate the limitations of STOI. Since every estimation algorithm will make errors that are distributed in different ways, performance evaluations should not be made solely on the basis of these metrics.
机译:迄今为止,用于评估理想二进制掩码估计算法的最常用结果度量是基于命中率与错误警报率(H-FA)之间的差异。近来,错误分布已显示出实质上影响可懂度。但是,H-FA独立对待每个掩模单元,并且没有考虑错误的分布方式。备选地,可以使用重建的语音,利用短时目标清晰度(STOI)度量来评估算法。这项研究调查了H-FA和STOI使用具有不同误差分布的掩码来预测二进制掩码语音的清晰度的能力。结果证明了H-FA无法预测行为可懂度,也说明了STOI的局限性。由于每种估计算法都会产生以不同方式分布的错误,因此,不应仅基于这些指标来进行性能评估。

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