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Robust distributed speech recognition in noise and packet loss conditions

机译:在噪声和丢包情况下的强大的分布式语音识别

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摘要

This paper examines the performance of a Distributed Speech Recognition (DSR) system in the presence of both background noise and packet loss. Recognition performance is examined for feature vectors extracted from speech using a physiologically-based auditory model, as an alternative to the more commonly-used Mel Frequency Cepstral Coefficient (MFCC) front-end. The feature vectors produced by the auditory model are vector quantised and combined in pairs for transmission over a statistically modelled channel that is subject to packet burst loss. In order to improve recognition performance in the presence of noise, the speech is enhanced prior to feature extraction using Wiener filtering. Packet loss mitigation to compensate for missing features is also used to further improve performance. Speech recognition results show the benefit of combining speech enhancement and packet loss mitigation to compensate for channel and environmental degradations.
机译:本文研究了同时存在背景噪声和丢包情况下的分布式语音识别(DSR)系统的性能。使用基于生理的听觉模型来检查从语音中提取的特征向量的识别性能,以替代更常用的梅尔频率倒谱系数(MFCC)前端。对听觉模型产生的特征向量进行矢量量化,并成对组合,以便在遭受数据包突发丢失的统计建模通道上传输。为了在存在噪声的情况下提高识别性能,在使用维纳滤波进行特征提取之前增强语音。减轻丢包以补偿缺少的功能也可用于进一步提高性能。语音识别结果显示了将语音增强和数据包丢失缓解相结合以补偿信道和环境恶化的好处。

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