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引用次数: 5

摘要

基于有限状态机,我们设计了一个执行语音意图识别的对话管理器,该有限状态机能够同时处理多个子模块并保持系统状态的有序转换。对话管理器集成到口语对话系统中。该系统的应用领域是针对机器人的,我们要解决的核心问题是识别用户的语音意图,这种语音意图可以是提问,也可以是给机器人下命令。我们的对话管理器是一个基于隐马尔可夫模型的序列分类器,它使用词性标记作为输出符号。分类器将可变长度的句子作为输入。它在一个小的数据集上进行训练,达到了83%的准确率。
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Speech Intent Recognition for Robots
We present the design of a dialog manager that performs speech intent recognition, based on a finite state machine which enables simultaneous processing of multiple sub-modules and maintains ordered transitions of system states. The dialog manager is integrated into a spoken dialog system. The application area of this system is targeted on robots, and the core problem that we address is to recognize user's speech intents, which could be either asking questions or giving commands to a robot. Our dialog manager is a sequence classifier based on hidden Markov models, and it uses part-of-speech tags as output symbols. The classifier take sentences of variable lengths as input. It is trained on a small data set and achieves and accuracy of 83%.
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