论文标题

快速图形过滤器用于分散子空间投影

Fast Graph Filters for Decentralized Subspace Projection

论文作者

Romero, Daniel, Mollaebrahim, Siavash, Beferull-Lozano, Baltasar, Asensio-Marco, César

论文摘要

传感器网络的许多推理问题涉及将测量信号投射到给定的子空间上。在现有的分散方法中,传感器与当地邻居进行通信,以获得一系列迭代的序列,该迭代渐近地收敛到所需的投影。相比之下,本文开发了在有限且大约最少的迭代次数中产生这些投影的方法。基于图形信号处理的工具,问题是作为图形滤镜的设计,而图形过滤器的设计又缩短为合适的图形移动操作员的设计。利用投影和移位矩阵的特征结构导致一个目标,其最小化可产生大约最小订单的滤波器。为了应对这个问题不是凸的事实,目前的工作引入了基于kronecker差异的核定标准的矩阵的不同特征值的新颖凸松弛。为了解决没有能够使用给定网络拓扑实现特定子空间投影的图形过滤器的情况,提出了第二个优化标准以近似所需的投影,同时交易迭代次数以获取近似误差。提出了两种算法以基于乘数的交替方向方法来优化上述标准。一项详尽的模拟研究表明,所获得的过滤器可以有效地获得比现有算法要快的子空间投影。

A number of inference problems with sensor networks involve projecting a measured signal onto a given subspace. In existing decentralized approaches, sensors communicate with their local neighbors to obtain a sequence of iterates that asymptotically converges to the desired projection. In contrast, the present paper develops methods that produce these projections in a finite and approximately minimal number of iterations. Building upon tools from graph signal processing, the problem is cast as the design of a graph filter which, in turn, is reduced to the design of a suitable graph shift operator. Exploiting the eigenstructure of the projection and shift matrices leads to an objective whose minimization yields approximately minimum-order graph filters. To cope with the fact that this problem is not convex, the present work introduces a novel convex relaxation of the number of distinct eigenvalues of a matrix based on the nuclear norm of a Kronecker difference. To tackle the case where there exists no graph filter capable of implementing a certain subspace projection with a given network topology, a second optimization criterion is presented to approximate the desired projection while trading the number of iterations for approximation error. Two algorithms are proposed to optimize the aforementioned criteria based on the alternating-direction method of multipliers. An exhaustive simulation study demonstrates that the obtained filters can effectively obtain subspace projections markedly faster than existing algorithms.

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