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Distributed robust change point detection for autoregressive processes with an application to distributed voice activity detection

机译:用于自动回归过程的分布式鲁棒变化点检测,以及在分布式语音活动检测中的应用

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The detection of abrupt changes in signals that are observed by wireless sensor networks (WSN), is an important research area with potential applications, e.g., in fault detection, prediction of natural catastrophic events, and speech segmentation. We consider the distributed robust detection of changes in the parameters of autoregressive (AR) models. Our method is robust on a single sensor level by suppressing the effect of outliers and impulsive noise via a robustified distance metric between a long-term and a short-term AR model. The new distributed change detector works without a fusion center and incorporates a weighting based on signal-to-noise-ratio (SNR) information, to ensure that every node will, at least, maintain its single node performance. A Monte-Carlo simulation study is provided which compares the proposed detector to a centralized version, in terms achievable detection rates and mean detection delay. Furthermore, an application example of distributed voice activity detection for a noisy speech signal is given.
机译:通过无线传感器网络(WSN)观察到的信号突变的检测是一个重要的研究领域,具有潜在的应用,例如在故障检测,自然灾难事件的预测和语音分段方面。我们考虑对自回归(AR)模型参数的变化进行分布式鲁棒检测。我们的方法通过长期和短期AR模型之间的稳定距离度量抑制异常值和脉冲噪声的影响,从而在单个传感器级别上具有鲁棒性。新的分布式变化检测器无需融合中心即可工作,并结合了基于信噪比(SNR)信息的权重,以确保每个节点至少能够保持其单节点性能。提供了蒙特卡洛模拟研究,该研究将拟议的检测器与集中式检测器进行了比较,可达到的检测率和平均检测延迟都很高。此外,给出了用于嘈杂语音信号的分布式语音活动检测的应用示例。

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