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Robust speech recognition over mobile and IP networks in burst-like packet loss

机译:移动和IP网络上的稳健语音识别,可避免突发性丢包

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This paper addresses the problem of achieving robust distributed speech recognition in the presence of burst-like packet loss. To compensate for packet loss a number of techniques are investigated to provide estimates of lost vectors. Experimental results on both a connected digits task and a large vocabulary continuous speech recognition task show that simple methods, such as repetition, are not as effective as interpolation methods which are better able to preserve the dynamics of the feature vector stream. Best performance is given by maximum a-posteriori (MAP) estimation of lost vectors which utilizes statistics of the feature vector stream. At longer burst lengths the performance of these compensation techniques deteriorates as the temporal correlation in the received feature vector stream reduces. To compensate for this interleaving is proposed which aims to disperse bursts of loss into a series of unconnected smaller bursts. Results show substantial gains in accuracy, to almost that of the no loss condition, when interleaving is combined with estimation techniques, although this is at the expense of introducing delay. This leads to the proposal that, for a distributed speech recognition application, it is more beneficial to trade delay for accuracy rather than trading bit-rate for accuracy as in forward error correction schemes.
机译:本文解决了在突发性丢包情况下实现鲁棒的分布式语音识别的问题。为了补偿分组丢失,研究了许多技术来提供丢失矢量的估计。在连接数字任务和大词汇量连续语音识别任务上的实验结果表明,简单的方法(例如重复)不如插值方法有效,插值方法能够更好地保留特征向量流的动态性。通过利用特征向量流的统计信息,对丢失向量进行最大后验(MAP)估计,可获得最佳性能。在更长的突发长度上,这些补偿技术的性能会随着接收到的特征向量流中的时间相关性降低而降低。为了补偿这种交织,提出了旨在将损耗突发分散为一系列未连接的较小突发的交织。结果表明,当将交错与估计技术结合使用时,尽管可以以引入延迟为代价,但在精度上却获得了实质性的提高,几乎达到了无损条件下的精度。这导致了这样的提议,对于分布式语音识别应用程序,与以前向纠错方案中的准确性为代价交换延迟相比,以准确性为代价交换延迟是更有益的。

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