Outlier-robust calibration method for sensor networks

Clément Dorffer, M. Puigt, G. Delmaire, G. Roussel
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引用次数: 5

Abstract

In this paper, we aim to blindly calibrate the responses of a sensor network whose outputs are possibly corrupted by outliers. In particular, we extend some well-known nullspace-based blind calibration approaches, proposed for fixed sensors with affine responses—i.e., with unknown gain and offset for each sensor—to that difficult case. These state-of-the-art approaches assume that the true data lie in a known lower dimensional subspace, so that in practice sensors can be calibrated by projection of the uncalibrated observations to this subspace. A robust extension was recently proposed in order to provide less sensitivity to noise. In this paper, we show that such methods (including the robust extensions) are very sensitive to outliers and we propose new extensions able to deal with such issues. For that purpose, we assume the outliers to be rare events, which can be modeled as a sparse contribution to the low-rank observed data. Using such an assumption, we separate sparse outliers from the low-rank data, so that we can perform calibration. We show that the proposed approach is able to handle up to 10% of outliers in the data without major impact on the calibration accuracy while state-of-the-art methods are already sensitive to the presence of one unique outlier.
传感器网络的离群鲁棒标定方法
在本文中,我们的目标是盲目校准输出可能被异常值损坏的传感器网络的响应。特别地,我们扩展了一些众所周知的基于零空间的盲校准方法,这些方法是针对具有仿射响应的固定传感器提出的。,每个传感器的增益和偏移量都是未知的。这些最先进的方法假设真实数据位于已知的低维子空间中,因此在实践中,传感器可以通过将未校准的观测投影到该子空间来校准。为了降低对噪声的敏感性,最近提出了一种鲁棒扩展。在本文中,我们证明了这些方法(包括鲁棒扩展)对异常值非常敏感,并提出了能够处理此类问题的新扩展。为此,我们假设异常值是罕见事件,可以将其建模为对低秩观测数据的稀疏贡献。利用这样的假设,我们从低秩数据中分离出稀疏的离群值,这样我们就可以进行校准。我们表明,所提出的方法能够处理数据中高达10%的异常值,而不会对校准精度产生重大影响,而最先进的方法已经对一个独特的异常值的存在很敏感。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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