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A Sequential Testing Procedure for Multiple Change-Point Detection in a Stream of Pneumatic Door Signatures

机译:气动门签名流中多个变化点检测的顺序测试程序

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The conventional change-point detection problem aims to detect distribution changes at some unknown time point in a sequence of multivariate observations. Such problem is hardly addressed when the data are functional and both the pre-change and post-change distributions are unknown. In this paper, we propose an online sequential procedure based on a Generalized Likelihood Ratio (GLR) testing to address these issues. This procedure aims to minimize the expected detection delay subject to a false alarm constraint, and is designed to detect multiple change-points in a stream of multivariate curves. The methodology relies upon a specific multivariate regression model that takes into account prior information about the curve segmentation. This generative model can be fitted using a dedicated Expectation-Maximization (EM) algorithm presented in a semi-supervised framework. The monitoring strategy is applied to a sequence of real data collected from a door system operating in a transit bus. The experimental results allow to highlight the effectiveness of the proposed approach.
机译:常规的变化点检测问题旨在检测多变量观测序列中某个未知时间点的分布变化。当数据正常工作且更改前和更改后分布均未知时,几乎不会解决此问题。在本文中,我们提出了一种基于广义似然比(GLR)测试的在线顺序程序来解决这些问题。此过程旨在最大程度地减少受错误警报约束的预期检测延迟,并旨在检测多变量曲线流中的多个变化点。该方法依赖于一个特定的多元回归模型,该模型考虑了有关曲线分割的先验信息。可以使用半监督框架中提供的专用期望最大化(EM)算法来拟合此生成模型。监视策略应用于从公交公共汽车上运行的车门系统收集的一系列实际数据。实验结果可以突出所提出方法的有效性。

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