Feature set augmentation for enhancing the performance of a non-intrusive quality predictor

Petko N. Petkov, H. Helgason, W. Kleijn
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引用次数: 1

Abstract

A non-intrusive quality predictor constitutes a mapping from signal features to a (typically one dimensional) representation of the perceived quality. Assuming that the regression model performing the mapping is suited to the data, the performance of the predictor largely depends on how well the parameters of this regression model can be inferred from the training data. In situations where the training data is scarce, model performance is degraded due to over-fitting. The effects of over-fitting can be mitigated by feature selection but the model performance remains low due to the insufficiently representative training data. The objective we pursue is to enhance the performance of a quality predictor by augmenting the feature set with the output of a pre-trained quality predictor. This approach introduces an implicit dependence of the regression model parameters on a larger amount of training data. In view of the increasing usage of speech signals with higher bandwidth, and the dearth of training data for such signals, an augmentation of particular interest is that of a wide-band feature set with a narrow-band quality prediction. Experimental results for additive noise and non-linear distortions encountered in hearing aids, using quality labels from an intrusive quality predictor, illustrate the performance enhancement capabilities of the proposed approach.
用于增强非侵入式质量预测器性能的特征集增强
非侵入式质量预测器构成从信号特征到感知质量表示(通常是一维)的映射。假设执行映射的回归模型适合于数据,预测器的性能在很大程度上取决于该回归模型的参数可以从训练数据中推断出来的程度。在训练数据稀缺的情况下,由于过度拟合导致模型性能下降。通过特征选择可以减轻过度拟合的影响,但由于训练数据的代表性不足,模型的性能仍然很低。我们追求的目标是通过使用预训练的质量预测器的输出来增加特征集来增强质量预测器的性能。这种方法引入了回归模型参数对大量训练数据的隐式依赖。鉴于越来越多地使用具有更高带宽的语音信号,以及此类信号的训练数据的缺乏,一个特别感兴趣的增强是具有窄带质量预测的宽带特征集。使用来自侵入式质量预测器的质量标签,对助听器中遇到的加性噪声和非线性失真进行了实验,结果表明了所提出方法的性能增强能力。
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