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首页> 外文期刊>IEEE Transactions on Signal Processing >Nonparametric Change Detection and Estimation in Large-Scale Sensor Networks
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Nonparametric Change Detection and Estimation in Large-Scale Sensor Networks

机译:大规模传感器网络中的非参数变化检测与估计

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摘要

The problem of detecting changes in the distribution of alarmed sensors is considered. Under a nonparametric change detection framework, several detection and estimation algorithms are presented based on the Vapnik-Chervonenkis (VC) theory. Theoretical performance guarantees are obtained by providing error exponents for false-alarm and miss detection probabilities. Recursive algorithms for the efficient computation of test statistics are derived. The estimation problem is also considered in which, after detection is made, the location with maximum distribution change is estimated.
机译:考虑了检测警报传感器的分布变化的问题。在非参数变化检测框架下,提出了几种基于Vapnik-Chervonenkis(VC)理论的检测和估计算法。通过为错误警报和未命中检测概率提供错误指数,可以获得理论上的性能保证。推导了有效计算测试统计量的递归算法。还考虑了估计问题,其中在进行检测之后,估计具有最大分布变化的位置。

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