使用云技术、人工智能和深度学习的语音命令识别简化数据库

S. Pleshkova, A. Bekyarski, Z. Zahariev
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引用次数: 4

摘要

与通用语音识别系统相比,语音命令识别任务使用有限的单词集,专用于处理一种或多种自然语言的全部单词集。如今,这些通用语音识别系统通常基于云技术、人工智能,可能还基于深度学习的神经网络。在语音命令识别等任务中使用这些通用语音识别系统的主要缺点是需要在数据库中对有限的单词集(语音命令的几个单词)进行不必要的搜索,其中包含了所选自然语言的非常大的单词集。因此,本文的目标是将使用云技术、人工智能和神经网络的通用语音识别系统的优势与语音命令识别任务中的深度学习相结合,但创建和使用简化的数据库作为现有的大型语音识别数据库的适当子集作为云数据库。
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Reduced Database for Voice Commands Recognition Using Cloud Technologies, Artificial Intelligence and Deep Learning
Voice commands recognition tasks used limited sets of words in comparison of universal speech recognition systems dedicated to work with the whole set of words of one or more that one natural languages. Today these universal speech recognition systems are usually based on cloud technologies, artificial intelligence and probably on neural networks with deep learning. The main drawback of using these universal speech recognition systems in tasks like voice commands recognition is the need of unnecessary search the limited set of words (a few words of voice commands) in the databases, containing very large set of words of a chosen natural language. Therefore, the proposition as the goal of this article is to combine the advantages of universal speech recognition systems using cloud technologies, artificial intelligence and neural networks with deep learning in voice commands recognition tasks, but creating and using the reduced database as an appropriate subset of the large speech recognition database existing as cloud databases.
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