Prediction of hearing aid performance using the multiple model least squares technique

V. Parsa, D. Jamieson
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Abstract

Measurement of noise and distortion in hearing aids is important for the design, fitting and assessment of these devices. In addition, it is imperative to test the hearing aids with speech signals to accurately predict their "real world" performance. In this paper, an adaptive system identification approach is taken to quantify the distortion and noise in a hearing aid. The hearing aid was modelled as a time varying autoregressive moving average (ARMA) system whose coefficients are estimated on a block-by-block basis using the multiple model least squares (MMLS) algorithm. Several speech-based distortion measures are derived from the modelling procedure which is shown to perform well in predicting perceptual judgements of hearing aid quality.
使用多模型最小二乘技术预测助听器性能
助听器的噪声和失真测量对于助听器的设计、装配和评估都是非常重要的。此外,用语音信号对助听器进行测试,以准确预测其“真实世界”的表现,这是势在必行的。本文采用一种自适应系统辨识方法来量化助听器的失真和噪声。将助听器建模为时变自回归移动平均(ARMA)系统,利用多模型最小二乘(MMLS)算法逐块估计其系数。从建模过程中导出了几种基于语音的失真度量,这些度量在预测助听器质量的感知判断方面表现良好。
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