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Automatic Speech Recognition Experiments with a Model of Normal and Impaired Peripheral Hearing

机译:具有正常和受损外周听力模型的自动语音识别实验

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摘要

Automatic speech recognition experiments were carried out using a model of normal and impaired peripheral hearing as a front-end preprocessor to a neural-network recognition stage trained and tested over the TIMIT speech database. The simulation of a flat mild/moderate sensorineural hearing loss led to a significant decrease in recognition performance compared to a simulation of normal hearing. Analyses of the confusion matrices using multidimensional scaling techniques showed that the decrements in scores were not associated with significant changes in the pattern of phoneme confusions. Consonant recognition was dominated by the features manner and place of articulation, but the features sonority, fricalion, voicing, and sibilance could also be detected. Vowel recognition was dominated by the first two formant frequenc ies. The results are in broad agreement with the speech perception data for normal and hearing-impaired listeners for the type of audiometric configuration simulated. The main discrepancy between the system and human data is the significantly lower recognition performance found for vowels, particularly when simulating normal hearing.
机译:自动语音识别实验是使用正常和受损的外周听力模型作为在TIMIT语音数据库上经过训练和测试的神经网络识别阶段的前端预处理器进行的。与正常听力的模拟相比,平坦的轻度/中度感音神经性听力损失的模拟导致识别性能的显着降低。使用多维缩放技术对混乱矩阵进行的分析表明,分数的降低与音素混乱模式的重大变化无关。辅音的识别方式主要由发音方式和发音位置决定,但特征性声音,摩擦音,发声和语调也可以被检测到。元音的识别主要由前两个共振峰频率组成。结果与模拟的听力测验配置类型的正常听觉和听障听众的语音感知数据基本一致。系统与人类数据之间的主要差异是元音的识别性能明显较低,尤其是在模拟正常听力时。

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