利用大脑活动预测文本到语音的质量

Rhenaldy, Ladysa Stella Karenza, Ivan Halim Parmonangan, F. Kurniadi
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引用次数: 0

摘要

感知到的音频质量是决定文本转语音系统在市场上是否成功的关键因素之一。因此,在将该系统投放市场之前进行音质评估是非常重要的。对合成音质的评价通常有主观上和客观上的两种,各有优缺点。主观方法通常需要大量的时间和资源,而客观方法缺乏人为的影响因素,而这些因素对于获得主观的质量感知至关重要。这些人为影响因素以脑电图(EEG)等形式在个体大脑中表现出来。因此,在本研究中,我们使用EEG数据进行音频质量预测。由于本研究使用的数据较少,我们还比较了增广数据和非增广数据的预测结果。我们的结果表明,某些方法对增强训练数据的预测效果明显更好。
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Predicting Text-To-Speech Quality using Brain Activity
The perceived audio quality is one of the key factors that may determine a text-to-speech system’s success in the market. Therefore, it is important to conduct audio quality evaluation before releasing such system into the market. Evaluating the synthesized audio quality is usually done either subjectively or objectively with their own advantages and disadvantages. Subjective methods usually require a large amount of time and resources, while objective methods lack human influence factors, which are crucial for deriving the subjective perception of quality. These human influence factors are manifested inside an individual’s brain in forms such as electroencephalograph (EEG). Thus, in this study, we performed audio quality prediction using EEG data. Since the data used in this study is small, we also compared the prediction result of the augmented and the non-augmented data. Our result shows that certain method yield significantly better prediction with augmented training data.
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