基于分布式粒子群优化的TWRI参数字典学习

Haroon Raja, W. Bajwa, F. Ahmad, M. Amin
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引用次数: 7

摘要

本文研究了一种分布式穿墙雷达网络,用于多径传播下的室内场景精确重建。提出了一种基于稀疏度的不完全内墙位置消除虚影目标的方法。不同于在一个中央融合站对观测数据进行聚合和处理,联合场景重建和内墙位置估计在整个网络中以分布式方式进行。更具体地说,利用交替最小化方法解决相关的非凸优化问题,其中使用最近提出的改进的分布式正交匹配追踪算法重建稀疏场景,使用本文提出的新型分布式粒子群优化算法(D-PSO)获得墙壁位置估计。利用现有的平均共识文献推导出D-PSO算法。通过数值仿真验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parametric dictionary learning for TWRI using distributed particle swarm optimization
This paper considers a distributed network of through-the-wall radars for accurate indoor scene reconstruction in the presence of multipath propagation. A sparsity based method is proposed for eliminating ghost targets under imperfect knowledge of interior wall locations. Instead of aggregating and processing the observations at a central fusion station, joint scene reconstruction and estimation of interior wall locations is carried out in a distributed manner across the network. More specifically, an alternating minimization approach is utilized to solve the associated non-convex optimization problem, wherein the sparse scene is reconstructed using the recently proposed modified distributed orthogonal matching pursuit algorithm while the wall location estimates are obtained with a novel distributed particle swarm optimization algorithm (D-PSO) proposed in this paper. Existing literature on averaging consensus is leveraged to derive the D-PSO algorithm. The efficacy of proposed approach is demonstrated using numerical simulation.
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