嵌入式设备上孤立词听写的动态词汇预测

Jussi Leppänen, Jilei Tian
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引用次数: 1

摘要

大词汇量语音识别系统主要是为桌面计算机和网络服务器上的快速处理器和大内存而开发的。在便携式设备上运行这些系统方面已经取得了很大进展。然而,在资源有限的嵌入式平台上开发高效的实时语音识别算法仍然存在挑战。本文提出了一种动态词汇预测方法,通过保持解码器词汇量较小来减少语音识别器解码器的内存占用。这可以减少声音混淆,并实现非常有效地利用计算资源。在一个孤立单词的短信听写任务上的实验表明,与基线系统相比,该系统可以消除40%的词汇预测错误。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic vocabulary prediction for isolated-word dictation on embedded devices
Large-vocabulary speech recognition systems have mainly been developed for fast processors and large amounts of memory that are available on desktop computers and network servers. Much progress has been made towards running these systems on portable devices. Challenges still exist, however, when developing highly efficient algorithms for real-time speech recognition on resource-limited embedded platforms. In this paper, a dynamic vocabulary prediction approach is proposed to decrease the memory footprint of the speech recognizer decoder by keeping the decoder vocabulary small. This leads to reduced acoustic confusion as well as achieving very efficient use of computational resources. Experiments on an isolated-word SMS dictation task have shown that 40% of the vocabulary prediction errors can be eliminated compared to the baseline system.
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