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Weakly Supervised Learning of Hidden Markov Models for Spoken Language Acquisition

机译:隐马尔可夫模型的弱监督学习

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In this paper, a spoken command and control interface that acquires spoken language through demonstrations from the user is discussed. The user can train the system by uttering a command and subsequently demonstrating the required action through an alternative interface. From the demonstration, a bag of semantic concepts representation that represents which semantic concepts are present in the demonstration is extracted. In the previous work, we have proposed a method for learning words for these concepts by linking the bag of semantic concepts representation to a bag of features representation of the acoustics. In this method, the order in which the words occur is lost. However, in many cases, the order in which the words occur is important to be able to determine the correct action. In this paper, the vocabulary acquisition based on nonnegative matrix factorization is jointly trained with a hidden Markov model (HMM), making it possible to use the bag of concepts representation as a weak supervision for HMM learning. This model can better utilize the timing information to improve the results and the order in which the words occur is retained making it possible to learn vocabulary and grammar. The proposed system is tested on several command and control tasks and it is shown that for unimpaired speech the resulting system outperforms the system solely based on vocabulary acquisition.
机译:在本文中,讨论了通过用户演示获取口语的口语命令和控制界面。用户可以通过发出命令并随后通过备用界面演示所需的操作来训练系统。从演示中,提取了一个语义概念表示包,用于表示演示中存在哪些语义概念。在先前的工作中,我们提出了一种通过将语义概念表示袋与声学特征表示袋链接来学习这些概念的单词的方法。在这种方法中,单词出现的顺序丢失了。但是,在许多情况下,单词出现的顺序对于能够确定正确的动作很重要。本文将基于非负矩阵分解的词汇习得与隐马尔可夫模型(HMM)联合训练,从而有可能将概念表示袋用作HMM学习的弱监督。该模型可以更好地利用时间信息来改善结果,并且单词出现的顺序得以保留,从而可以学习词汇和语法。所提出的系统在几个命令和控制任务上进行了测试,结果表明,对于语音不受影响的系统,仅基于词汇获取,其结果优于系统。

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