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Remote Sensing via ?1-Minimization

机译:通过?1-最小化进行遥感

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摘要

We consider the problem of detecting the locations of targets in the far field by sending probing signals from an antenna array and recording the reflected echoes. Drawing on key concepts from the area of compressive sensing, we use an ?_1-based regularization approach to solve this, generally ill-posed, inverse scattering problem. As is common in compressive sensing, we exploit randomness, which in this context comes from choosing the antenna locations at random. With n antennas we obtain n~2 measurements of a vector x ∈ C~N representing the target locations and reflectivities on a discretized grid. It is common to assume that the scene x is sparse due to a limited number of targets. Under a natural condition on the mesh size of the grid, we show that an s-sparse scene can be recovered via ?_1-minimization with high probability if n~2 ≥ Cs log~2(N). The reconstruction is stable under noise and when passing from sparse to approximately sparse vectors. Our theoretical findings are confirmed by numerical simulations.
机译:我们考虑通过从天线阵列发送探测信号并记录反射回波来检测远场目标的位置的问题。利用来自压缩感测领域的关键概念,我们使用基于?_1的正则化方法来解决此通常不适定的逆散射问题。与压缩感测中常见的一样,我们利用随机性,在这种情况下,随机性来自于随机选择天线位置。使用n根天线,我们获得了向量x∈C〜N的n〜2个测量值,这些矢量代表离散网格上的目标位置和反射率。通常假定场景x由于目标数量有限而稀疏。在自然的网格网格大小条件下,我们表明,如果n〜2≥Cs log〜2(N),则可以通过?_1-最小化以高概率恢复s稀疏场景。重建在噪声下以及从稀疏向量到近似稀疏​​向量时都是稳定的。我们的理论发现被数值模拟所证实。

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