基于高斯后验图的分段DTW的无监督语音关键字识别

Yaodong Zhang, James R. Glass
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引用次数: 363

摘要

在本文中,我们提出了一个无监督学习框架来解决语音关键字的检测问题。在没有任何转录信息的情况下,训练高斯混合模型用高斯后图标记语音帧。给定一个或多个关键字的口语示例,我们使用分段动态时间扭曲来比较关键字样本和测试话语之间的高斯后验图。然后对所有测试话语的失真分数进行排序,得到关键字检测结果。我们将TIMIT语料库作为一个开发集来调整我们系统中的参数,并将MIT Lecture语料库用于更实质性的评估。结果证明了我们的无监督学习框架在关键词识别任务上的可行性和有效性。
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Unsupervised spoken keyword spotting via segmental DTW on Gaussian posteriorgrams
In this paper, we present an unsupervised learning framework to address the problem of detecting spoken keywords. Without any transcription information, a Gaussian Mixture Model is trained to label speech frames with a Gaussian posteriorgram. Given one or more spoken examples of a keyword, we use segmental dynamic time warping to compare the Gaussian posteriorgrams between keyword samples and test utterances. The keyword detection result is then obtained by ranking the distortion scores of all the test utterances. We examine the TIMIT corpus as a development set to tune the parameters in our system, and the MIT Lecture corpus for more substantial evaluation. The results demonstrate the viability and effectiveness of our unsupervised learning framework on the keyword spotting task.
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