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Voice command recognition in intelligent systems using deep neural networks

机译:使用深度神经网络的智能系统中的语音命令识别

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In this article, we focus on the isolated voice command recognition for autonomous man-machine and intelligent robotic systems. We propose to create a grammar model for a small testing command set with self-loops for each state to return blank symbols for noise and-of-vocabulary words. In addition, we use single arc connected beginning and ending of the grammar in order to filter unknown commands. As a result, the grammar is resistant to distortions and unexpected words near or inside of command. We implemented the proposed approach using Finite State Transducers in the Kaldi framework and examined it using self-recorded noised data with various level of signal-to-noise ratio. We compared recognition accuracy and average decision-making time of our approach with the state-of-the-art continuous speech recognition engines based on language models. It was experimentally shown that our approach is characterized by up to 60% higher accuracy than conventional offline speech recognition methods based on language models. The speed of utterance recognition is 3 times higher than speed of traditional continuous speech recognition algorithms.
机译:在本文中,我们专注于自主人机和智能机器人系统的隔离语音命令识别。我们建议为每个状态带有自循环的小型测试命令集创建一个语法模型,以返回空白符号来表示噪音和词汇。另外,我们使用单弧连接的语法开头和结尾来过滤未知命令。结果,语法可以抵抗命令附近或命令内部的变形和意外单词。我们在Kaldi框架中使用有限状态传感器实现了所提出的方法,并使用了具有各种信噪比水平的自记录噪声数据对其进行了检验。我们将我们的方法的识别准确性和平均决策时间与基于语言模型的最先进的连续语音识别引擎进行了比较。实验表明,与基于语言模型的传统脱机语音识别方法相比,我们的方法具有高达60%的更高准确性。语音识别速度是传统连续语音识别算法速度的3倍。

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