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A quadratically convergent algorithm for convex-set constrained signal recovery

机译:凸集约束信号恢复的二次收敛算法

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This paper addresses the problem of recovering a signal that is constrained to lie in a convex set, from linear measurements. The current standard is the alternating projections paradigm (POCS), which has only first-order convergence in general. We present a quadratically convergent iterative algorithm (Newton algorithm) for signal recovery from linear measurements and convex-set constraints. A new result on the existence and construction of the derivative of the projection operator onto a convex set is obtained, which is used in the Newton algorithm. An interesting feature of the new algorithm is that each iteration requires the solution of a simpler subspace-constrained reconstruction problem. A computation- and memory-efficient version of the algorithm is also obtained by using the conjugate-gradient algorithm within each Newton iteration to avoid matrix inversion and storage. From a computational point of view, the computation per iteration of this algorithm is similar to the computation per iteration of the standard alternating projections algorithm. The faster rate of convergence (compared to alternating projections) enables us to obtain a high-resolution reconstruction with fewer computations. The algorithm is thus well suited for large-scale problems that typically arise in image recovery applications. The algorithm is demonstrated in several applications.
机译:本文讨论了从线性测量中恢复约束为凸集的信号的问题。当前的标准是交替投影范式(POCS),通常只有一阶收敛。我们提出了一种从线性测量和凸集约束中恢复信号的二次收敛迭代算法(牛顿算法)。获得了关于投影算子的导数在凸集上的存在性和构造的新结果,并将其用于牛顿算法。新算法的一个有趣特征是每次迭代都需要解决一个更简单的受子空间约束的重构问题。通过在每个牛顿迭代中使用共轭梯度算法来避免矩阵求逆和存储,还可以获得该算法的计算和存储效率高的版本。从计算的角度来看,此算法的每次迭代计算都类似于标准交替投影算法的每次迭代计算。更快的收敛速度(与交替投影相比)使我们能够以较少的计算量获得高分辨率的重建。因此,该算法非常适合通常在图像恢复应用程序中出现的大规模问题。该算法在几种应用中得到了证明。

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