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A feature-based linear regression model for predicting perceptual ratings of music by cochlear implant listeners

机译:基于特征的线性回归模型,用于预测人工耳蜗听众对音乐的感知等级

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While speech quality and intelligibility prediction methods for normal-hearing and hearing-impaired listeners have found a lot of attention as a cost-saving complement to listening tests, analogous procedures for music signals are still rare. In this paper a method is proposed for predicting perceptual ratings of music as obtained by cochlear implant (CI) listeners. For this purpose a listening test with CI listeners was conducted, who were asked to provide their ratings for music excerpts on different scales. It is shown that principal component regression (PCR) is a suitable tool to model and accurately predict the median ratings of the CI listeners using timbre and pitch related signal features as predictor variables. These features describe signal characteristics such as high-frequency energy, spectral bandwidth and roughness. The proposed prediction model is a first step towards an instrumental evaluation procedure for music processing algorithms in hearing devices.
机译:尽管正常听觉和听觉受损听众的语音质量和清晰度预测方法作为节省听觉测试的一种补充而引起了广泛关注,但音乐信号的类似程序仍然很少见。在本文中,提出了一种方法来预测由人工耳蜗(CI)听众获得的音乐的感知等级。为此,对CI听众进行了听力测试,要求他们提供不同级别音乐摘录的评分。结果表明,主成分回归(PCR)是使用音色和音高相关信号特征作为预测变量来建模和准确预测CI收听者中位收视率的合适工具。这些特征描述了信号特征,例如高频能量,频谱带宽和粗糙度。所提出的预测模型是迈向助听器音乐处理算法的仪器评估程序的第一步。

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