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Sub-Linear Time Support Recovery for Compressed Sensing Using Sparse-Graph Codes

机译:使用稀疏图形代码进行压缩检测的子线性时间支持恢复

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We study the support recovery problem for compressed sensing, where the goal is to reconstruct the sparsity pattern of a high-dimensional K-sparse signal x is an element of R-N, as well as the corresponding sparse coefficients, from low-dimensional linear measurements with and without noise. Our key contribution is a new compressed sensing framework through a new family of carefully designed sparse measurement matrices associated with minimal measurement costs and a low-complexity recovery algorithm. Specifically, the measurement matrix in our framework is designed based on the well-crafted sparsification through capacity-approaching sparse-graph codes, where the sparse coefficients can be recovered efficiently in a few iterations by performing simple error decoding over the observations. We formally connect this general recovery problem with sparse-graph decoding in packet communication systems and analyze our framework in terms of the measurement cost, computational complexity, and recovery performance. Specifically, we show that in the noiseless setting, our framework can recover any arbitrary K-sparse signal in O(K) time using 2K measurements asymptotically with a vanishing error probability. In the noisy setting, when the sparse coefficients take values in a finite and quantized alphabet, our framework can achieve the same goal in time O(K log(N/K)) using O(K log(N/K)) measurements obtained from measurement matrix with elements {-1, 0, 1}. When the sparsity K is sub-linear in the signal dimension K = O(N-delta) for some 0 < delta < 1, our results are order-optimal in terms of measurement costs and run-time, both of which are sub-linear in the signal dimension N. The sub-linear measurement cost and run-time can also be achieved with continuous-valued sparse coefficients, with a slight increment in the logarithmic factors. More specifically, in the continuous alphabet setting, when K = O(N-delta) and the magnitudes of all the sparse coefficients are bounded below by a positive constant, our algorithm can recover an arbitrarily large (1 - p)-fraction of the support of the sparse signal using O(K log(N/K) log log(N/K)) measurements, and O(K log(1+r) (N/K)) run-time, where r is an arbitrarily small constant. For each recovered sparse coefficient, we can achieve O(epsilon) error for an arbitrarily small constant epsilon. In addition, if the magnitudes of all the sparse coefficients are upper bounded by O(K-c) for some constant c < 1, then we are able to provide a strong l(1) recovery guarantee for the estimated signal <(x)over cap>: parallel to(x) over cap - x parallel to(1) <= kappa parallel to x parallel to(1), where the constant kappa can be arbitrarily small. This offers the desired scalability of our framework that can potentially enable real-time or near-realtime processing for massive datasets featuring sparsity, which are relevant to a multitude of practical applications.
机译:我们研究了压缩感测的支持恢复问题,其中目标是重建高维k稀线信号X的稀疏模式是RN的元素,以及来自低维线性测量的RN的元素,以及相应的稀疏系数没有噪音。我们的主要贡献是一种新的压缩传感框架,通过新的一系列精心设计的稀疏测量矩阵,与最小的测量成本和低复杂性恢复算法相关。具体地,我们框架中的测量矩阵是基于通过接近稀疏图形码的良好制作的稀疏性的稀疏性稀疏设计,其中通过执行在观察中进行简单的错误解码,可以在几个迭代中有效地恢复稀疏系数。我们正式通过分组通信系统中的稀疏图解码,在数据包通信系统中进行了稀疏图形,并在测量成本,计算复杂性和恢复性能方面分析我们的框架。具体而言,我们表明,在无噪声设置中,我们的框架可以使用渐近的渐近概率渐近的2K测量来恢复O(k)时间中的任何任意k稀疏信号。在嘈杂的设置中,当稀疏系数在有限和量化的字母表中取值时,我们的框架可以使用获得的O(k log(n / k))测量来实现相同的目标O(k log(n / k))从带元素{-1,0,1}的测量矩阵。当稀疏性k在信号尺寸K = O(n-delta)中为0 :平行于(x)上的(x) - x平行于(1)<= kappa平行于(1),其中常数kappa可以任意小。这提供了我们框架的所需可扩展性,这可能能够为具有稀疏性的大规模数据集来实现实时或接近实时处理,这与众多实际应用相关。

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