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Bounds on the Number of Identifiable Outliers in Source Localization by Linear Programming

机译:通过线性规划确定源本地化中可识别的异常值的数量

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Precise localization have attracted considerable interest in the engineering literature. Most publications consider small measurement errors. In this work we discuss localization in the presence of outliers, where several measurements are severely corrupted while sufficient other measurements are reasonably precise. It is known that maximum likelihood or least squares provide poor results under these conditions. On the other hand, robust regression can successfully handle up to 50% outliers but is associated with high complexity. Using the $ell_{1}$ norm as the penalty function provides some immunity from outliers and can be solved efficiently with linear programming methods. We use linear equations to describe the localization problem and then we apply the $ell_{1}$ norm and linear programming to detect the outliers and avoid the wild measurements in the final solution. Our main contribution is an exploitation of recent results in the field of sparse representation to obtain bounds on the number of detectable outliers. The theory is corroborated by simulations and by real data.
机译:精确的本地化引起了工程文献的极大兴趣。大多数出版物认为测量误差较小。在这项工作中,我们讨论了存在异常值时的局域性,在异常值中,一些测量值严重受损,而其他足够的测量值则相当精确。众所周知,在这些条件下,最大似然或最小二乘会提供较差的结果。另一方面,稳健的回归可以成功处理高达50%的异常值,但具有很高的复杂性。使用$ ell_ {1} $范数作为惩罚函数可以提供离群值的一些免疫力,并且可以使用线性编程方法有效地解决。我们使用线性方程式描述定位问题,然后应用$ ell_ {1} $范数和线性规划来检测异常值,并在最终解决方案中避免野蛮的测量。我们的主要贡献是利用稀疏表示领域的最新成果来获得可检测离群值数量的界限。该理论通过仿真和真实数据得到证实。

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