高效的唤醒词检测语料库设计

Delowar Hossain, Yoshinao Sato
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引用次数: 0

摘要

唤醒词检测是防止虚拟语音代理被无意触发的一项不可或缺的技术。虽然各种各样的神经网络被提出用于唤醒词检测,但很少有人关注有效的语料库设计,这是我们在本研究中讨论的问题。为此,我们通过众包平台收集语音数据,并在使用语料库的不同子集进行训练时评估几个神经网络的性能。研究结果表明,高效的语料库设计对降低误检率有以下要求:(1)连续语音的短片段可以作为负样本,但效果不如随机词;(2)“对抗性”词(即与唤醒词语音相似的词)的话语作为负样本时,有助于显著提高性能;(3)单个说话人最好同时提供阳性和阴性样本;(4)增加说话人的数量比增加每个说话人重复一个唤醒词的次数要好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient corpus design for wake-word detection
Wake-word detection is an indispensable technology for preventing virtual voice agents from being unintentionally triggered. Although various neural networks were proposed for wake-word detection, less attention has been paid to efficient corpus design, which we address in this study. For this purpose, we collected speech data via a crowdsourcing platform and evaluated the performance of several neural networks when different subsets of the corpus were used for training. The results reveal the following requirements for efficient corpus design to produce a lower misdetection rate: (1) short segments of continuous speech can be used as negative samples, but they are not as effective as random words; (2) utterances of "adversarial" words, i.e., phonetically similar words to a wake-word, contribute to improving performance significantly when they are used as negative samples; (3) it is preferable for individual speakers to provide both positive and negative samples; (4) increasing the number of speakers is better than increasing the number of repetitions of a wake-word by each speaker.
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