分布式语音识别的标准和混合建模技术比较

J. Stadermann, G. Rigoll
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引用次数: 3

摘要

分布式语音识别(DSR)是一种用于移动识别任务的有趣技术,它将识别器分成两个部分,并通过传输通道连接起来。我们比较了标准和混合建模方法在这种环境下的性能。评估是在从TI数字和Aurora数据库中获取的干净和有噪声的语音样本上完成的。我们的研究结果表明,对于这项任务,混合建模技术可以优于标准连续系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of standard and hybrid modeling techniques for distributed speech recognition
Distributed speech recognition (DSR) is an interesting technology for mobile recognition tasks where the recognizer is split up into two parts and connected by a transmission channel. We compare the performance of standard and hybrid modeling approaches in this environment. The evaluation is done on clean and noisy speech samples taken from the TI digits and the Aurora databases. Our results show that, for this task, the hybrid modeling techniques can outperform standard continuous systems.
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