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Effects of Physiological Internal Noise on Model Predictions of Concurrent Vowel Identification for Normal-Hearing Listeners

机译:生理性内部噪声对正常听众并发元音识别模型预测的影响

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摘要

Previous studies have shown that concurrent vowel identification improves with increasing temporal onset asynchrony of the vowels, even if the vowels have the same fundamental frequency. The current study investigated the possible underlying neural processing involved in concurrent vowel perception. The individual vowel stimuli from a previously published study were used as inputs for a phenomenological auditory-nerve (AN) model. Spectrotemporal representations of simulated neural excitation patterns were constructed (i.e., neurograms) and then matched quantitatively with the neurograms of the single vowels using the Neurogram Similarity Index Measure (NSIM). A novel computational decision model was used to predict concurrent vowel identification. To facilitate optimum matches between the model predictions and the behavioral human data, internal noise was added at either neurogram generation or neurogram matching using the NSIM procedure. The best fit to the behavioral data was achieved with a signal-to-noise ratio (SNR) of 8 dB for internal noise added at the neurogram but with a much smaller amount of internal noise (SNR of 60 dB) for internal noise added at the level of the NSIM computations. The results suggest that accurate modeling of concurrent vowel data from listeners with normal hearing may partly depend on internal noise and where internal noise is hypothesized to occur during the concurrent vowel identification process.
机译:先前的研究表明,即使元音具有相同的基本频率,并发元音识别也会随着元音的时间开始异步性的提高而提高。当前的研究调查了同时元音感知可能涉及的潜在神经处理。来自以前发表的研究的单个元音刺激被用作现象学听觉神经(AN)模型的输入。构造了模拟神经兴奋模式的光谱时态表示(即神经图),然后使用神经图相似性指数量度(NSIM)与单个元音的神经图进行定量匹配。一种新颖的计算决策模型用于预测并发元音识别。为了促进模型预测与行为人类数据之间的最佳匹配,在神经图生成或使用NSIM程序进行神经图匹配时添加了内部噪声。对于行为数据的最佳拟合是通过在神经图上添加的内部噪声的信噪比(SNR)为8 dB来实现的,而对于在以下位置添加的内部噪声而言,其内部噪声的量要小得多(SNR为60 dB) NSIM计算的级别。结果表明,来自正常听觉的听众的并发元音数据的准确建模可能部分取决于内部噪声以及假设在并发元音识别过程中发生内部噪声的位置。

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