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Using statistical decision theory to predict speech intelligibility. I. Model structure

机译:使用统计决策理论预测语音清晰度。一,模型结构

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This article introduces a new model that predicts speech intelligibility based on statistical decision theory. This model, which we call the speech recognition sensitivity (SRS) model, aims to predict speech-recognition performance from the long-term average speech spectrum, the masking excitation in the listener's ear, the linguistic entropy of the speech material, and the number of response alternatives available to the listener. A major difference between the SRS model and other models with similar aims, such as the articulation index, is this model's ability to account for synergetic and redundant interactions among spectral bands of speech. In the SRS model, linguistic entropy affects intelligibility by modifying the listener's identification sensitivity to the speech. The effect of the number of response alternatives on the test score is a direct consequence of the model structure. The SRS model also appears to predict the differential effect of linguistic entropy on filter condition and the interaction between linguistic entropy, signal-to-noise ratio, and language proficiency.
机译:本文介绍了一种基于统计决策理论预测语音清晰度的新模型。这个模型,我们称为语音识别敏感性(SRS)模型,旨在根据长期平均语音频谱,听众耳朵中的屏蔽激励,语音材料的语言熵以及数量来预测语音识别性能。侦听器可用的响应选项。 SRS模型与其他具有类似目的的模型(例如清晰度指数)之间的主要区别在于,该模型能够解释语音频谱之间的协同和冗余交互。在SRS模型中,语言熵通过修改收听者对语音的识别敏感性来影响清晰度。回答选项的数量对测试分数的影响是模型结构的直接结果。 SRS模型似乎还可以预测语言熵对过滤条件的差异影响,以及语言熵,信噪比和语言能力之间的相互作用。

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