A Data-Driven Investigation of Noise-Adaptive Utterance Generation with Linguistic Modification

Anupama Chingacham, Vera Demberg, D. Klakow
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Abstract

In noisy environments, speech can be hard to understand for humans. Spoken dialog systems can help to enhance the intelligibility of their output, either by modifying the speech synthesis (e.g., imitate Lombard speech) or by optimizing the language generation. We here focus on the second type of approach, by which an intended message is realized with words that are more intelligible in a specific noisy environment. By conducting a speech perception experiment, we created a dataset of 900 paraphrases in babble noise, perceived by native English speakers with normal hearing. We find that careful selection of paraphrases can improve intelligibility by 33% at SNR -5 dB. Our analysis of the data shows that the intelligibility differences between paraphrases are mainly driven by noise-robust acoustic cues. Furthermore, we propose an intelligibility-aware paraphrase ranking model, which outperforms baseline models with a relative improvement of 31.37% at SNR -5 dB.
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带有语言修饰的自适应语音生成的数据驱动研究
在嘈杂的环境中,人类很难理解语言。口语对话系统可以通过修改语音合成(例如,模仿伦巴第语)或优化语言生成来帮助提高其输出的可理解性。我们在这里关注第二种方法,通过这种方法,用在特定嘈杂环境中更容易理解的单词来实现预期的信息。通过进行语音感知实验,我们创建了一个数据集,其中包含900个在咿呀学语噪音下的释义,这些释义由听力正常的英语母语人士感知。我们发现,在信噪比为-5 dB的情况下,仔细选择释义可以提高33%的可理解性。我们对数据的分析表明,释义之间的可理解性差异主要是由噪声强的声学线索驱动的。此外,我们提出了一个可理解性感知的释义排序模型,该模型在信噪比为-5 dB时比基线模型相对提高了31.37%。
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