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Mobile target localization through low complexity compressed sensing with iterative alternate coordinates projections

机译:通过低复杂度的压缩感测和迭代的交替坐标投影来进行移动目标定位

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In this paper, we evaluate the potential of several compressed sensing (CS) techniques for localizing mobile targets within a wireless sensor network. First, we point out the limitations of popular algorithms enabling greedy s-sparse signal recovery, such as the recursive least-absolute shrinkage and selection operator (RLASSO) or the simultaneous orthogonal matching pursuit (SOMP). Then, we adapt the previous methods, making use of their non-binary outputs as soft information while accounting for the presence of a mobile target over a 2D grid. We also reformulate the localization problem by considering separable coordinate-wise CS dictionaries and accordingly, we introduce a new iterative gradient descent based solver relying on alternate coordinates projections (IACP). In comparison with conventional approaches, the latter CS solution benefits from arbitrarily fine spatial granularity at very low computational complexity. Finally, we show how successive restrictions of the search area under mobility can contribute to achieve even better localization performance and lower complexity for two of the proposed CS algorithms.
机译:在本文中,我们评估了几种压缩传感(CS)技术在无线传感器网络内定位移动目标的潜力。首先,我们指出了支持贪婪s稀疏信号恢复的流行算法的局限性,例如递归最小绝对收缩和选择算子(RLASSO)或同时正交匹配追踪(SOMP)。然后,我们调整先前的方法,利用它们的非二进制输出作为软信息,同时考虑2D网格上是否存在移动目标。我们还考虑了可分离的坐标CS字典,从而重新制定了定位问题,因此,我们引入了基于交替坐标投影(IACP)的基于迭代梯度下降的新求解器。与传统方法相比,后一种CS解决方案得益于在非常低的计算复杂度下任意精细的空间粒度。最后,我们展示了在移动性下搜索区域的连续限制如何有助于实现所提出的两种CS算法的甚至更好的定位性能和更低的复杂度。

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