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Multimodal Physiological Quality-of-Experience Assessment of Text-to-Speech Systems

机译:文本到语音系统的多模式生理体验质量评估

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摘要

With the growing complexity of various text-to-speech systems, it is becoming more important to understand the underlying perceptual and judgement processes that drive user Quality-of-Experience (QoE) perception. Typical QoE assessment techniques, such as listening tests with self-report ratings, are useful but provide limited insight into these underlying processes. Recent advances in neuroimaging and physiological monitoring technologies, however, have opened new doors and allowed us to better understand and measure QoE perception. In this paper, we explore the use of two neuroimaging techniques, namely electroencephalography (EEG) and functional near-infrared spectroscopy (fNIRS), to better understand neuronal and cerebral haemodynamic changes resultant from synthesized speech of varying quality. Neural correlates of several QoE dimensions were derived and validated on the publicly available PhySyQX database. Fusion of EEG, fNIRS, and fNIRS-derived physiological parameters, combined with conventional features extracted from the synthesized speech signal showed to accurately represent several QoE dimensions, including those related to listener affective states. It is hoped that these findings will help researchers build better instrumental QoE models that incorporate technological, contextual, and human influence factors.
机译:随着各种文本到语音系统的复杂性日益增长,理解驱动用户体验质量(QoE)感知的潜在感知和判断过程变得越来越重要。典型的QoE评估技术(例如具有自我报告评分的听力测试)很有用,但对这些基本过程的了解有限。但是,神经影像和生理监测技术的最新进展为我们打开了新的大门,使我们能够更好地理解和衡量QoE感知。在本文中,我们探索使用两种脑电图成像技术,即脑电图(EEG)和功能近红外光谱(fNIRS),以更好地理解由质量不同的合成语音引起的神经元和脑血流动力学变化。几个QoE维度的神经相关性在公共可用的PhySyQX数据库中获得并验证。脑电图,fNIRS和fNIRS衍生的生理参数的融合,再加上从合成语音信号中提取的常规特征,显示出可以准确代表几个QoE维度,包括那些与听众情感状态有关的维度。希望这些发现将有助于研究人员建立更好的工具性QoE模型,其中包含技术,上下文和人为因素。

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