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Uncertainty decoding for distributed speech recognition over error-prone networks

机译:易错网络上分布式语音识别的不确定性解码

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摘要

In this paper, we propose an enhanced error concealment strategy at the server side of a distributed speech recognition (DSR) system, which is fully compatible with the existing DSR standard. It is based on a Bayesian approach, where the a posteriori probability density of the error-free feature vector is computed, given all received feature vectors which are possibly corrupted by transmission errors. Rather than computing a point estimate, such as the MMSE estimate, and plugging it into the Bayesian decision rule, we employ uncertainty decoding, which results in an integration over the uncertainty in the feature domain.
机译:在本文中,我们提出了一种在分布式语音识别(DSR)系统的服务器端增强的错误隐藏策略,该策略与现有DSR标准完全兼容。它基于贝叶斯方法,其中给定所有可能被传输错误破坏的特征向量,计算无错误特征向量的后验概率密度。我们没有计算点估计(例如MMSE估计)并将其插入贝叶斯决策规则中,而是采用不确定性解码,这导致了特征域中不确定性的积分。

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