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Forward-Masked Frequency Selectivity Improvements in Simulated and Actual Cochlear Implant Users Using a Preprocessing Algorithm

机译:使用预处理算法提高模拟和实际人工耳蜗用户的前向掩膜频率选择性

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Frequency selectivity can be quantified using masking paradigms, such as psychophysical tuning curves (PTCs). Normal-hearing (NH) listeners show sharp PTCs that are level- and frequency-dependent, whereas frequency selectivity is strongly reduced in cochlear implant (CI) users. This study aims at (a) assessing individual shapes of PTCs in CI users, (b) comparing these shapes to those of simulated CI listeners (NH listeners hearing through a CI simulation), and (c) increasing the sharpness of PTCs using a biologically inspired dynamic compression algorithm, BioAid, which has been shown to sharpen the PTC shape in hearing-impaired listeners. A three-alternative-forced-choice forward-masking technique was used to assess PTCs in 8 CI users (with their own speech processor) and 11 NH listeners (with and without listening through a vocoder to simulate electric hearing). CI users showed flat PTCs with large interindividual variability in shape, whereas simulated CI listeners had PTCs of the same average flatness, but more homogeneous shapes across listeners. The algorithm BioAid was used to process the stimuli before entering the CI users’ speech processor or the vocoder simulation. This algorithm was able to partially restore frequency selectivity in both groups, particularly in seven out of eight CI users, meaning significantly sharper PTCs than in the unprocessed condition. The results indicate that algorithms can improve the large-scale sharpness of frequency selectivity in some CI users. This finding may be useful for the design of sound coding strategies particularly for situations in which high frequency selectivity is desired, such as for music perception.
机译:可以使用掩蔽范例(例如心理物理调谐曲线(PTC))来量化频率选择性。正常听力(NH)的听众显示出尖锐的PTC,它们取决于电平和频率,而在人工耳蜗(CI)用户中,频率选择性大大降低。这项研究的目的是(a)评估CI用户中PTC的各个形状,(b)将这些形状与模拟CI听众(通过CI模拟进行听觉的NH听众)进行比较,以及(c)使用生物学方法提高PTC的清晰度。启发性的动态压缩算法BioAid,该算法已被证明可以改善听力障碍听众的PTC形状。三种选择强制选择的前向掩蔽技术被用来评估8个CI用户(使用他们自己的语音处理器)和11个NH听众(通过和不通过声码器来模拟电听)的PTC。 CI用户显示的个体形状差异较大的扁平PTC,而模拟的CI侦听器具有相同的平均平坦度,但各个侦听器的形状更均一。在进入CI用户的语音处理器或声码器模拟之前,使用了BioAid算法来处理刺激。该算法能够部分恢复两组中的频率选择性,尤其是在八个CI用户中的七个中,这意味着与未处理条件相比,PTC更加清晰。结果表明,该算法可以提高部分CI用户的频率选择性的清晰度。该发现对于声音编码策略的设计可能是有用的,尤其是在需要高频选择性的情况下,例如对于音乐感知。

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