Vietnamese sentence recognition algorithm in embedded device based on specialized transition network

Dang Vu Quoc, H. T. Van, Trang Hoang
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Abstract

In this work, a proposed high speed continuous speech recognition algorithm which was designed towards embedded devices and experimented on Vietnamese will be presented. To be more specific, this algorithm has used a transition network (TN) as search-space, which integrates many language model systems and condensed by the algorithm format to both reduce processing time and memory usage while matching. The final results which were evaluated on 100 speech samples have achieved the high accuracy of 92.24% on an embedded device named WandBoard Rev C1 kit.
基于专用转换网络的嵌入式设备越南语句子识别算法
在这项工作中,提出了一种针对嵌入式设备设计的高速连续语音识别算法,并在越南进行了实验。具体地说,该算法使用过渡网络(TN)作为搜索空间,该网络集成了许多语言模型系统,并通过算法格式进行压缩,以减少匹配时的处理时间和内存使用。最终结果在100个语音样本上进行了评估,在一个名为WandBoard Rev C1的嵌入式设备上达到了92.24%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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