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首页> 外文期刊>IEEE Transactions on Image Processing >Compressive Radar Imaging of Stationary Indoor Targets With Low-Rank Plus Jointly Sparse and Total Variation Regularizations
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Compressive Radar Imaging of Stationary Indoor Targets With Low-Rank Plus Jointly Sparse and Total Variation Regularizations

机译:静止室内目标的压缩雷达成像,低级别加上共同稀疏和总变化规范化

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摘要

This paper addresses the problem of wall clutter mitigation and image reconstruction for through-wall radar imaging (TWRI) of stationary targets by seeking a model that incorporates low-rank (LR), joint sparsity (JS), and total variation (TV) regularizers. The motivation of the proposed model is that LR regularizer captures the low-dimensional structure of wall clutter; JS guarantees a small fraction of target occupancy and the similarity of sparsity profile among channel images; TV regularizer promotes the spatial continuity of target regions and mitigates background noise. The task of wall clutter mitigation and target image reconstruction is formulated as an optimization problem comprising LR, JS, and TV regularization terms. To handle this problem efficiently, an iterative algorithm based on the forward-backward proximal gradient splitting technique is introduced, which captures wall clutter and yields target images simultaneously. Extensive experiments are conducted on real radar data under compressive sensing scenarios. The results show that the proposed model enhances target localization and clutter mitigation even when radar measurements are significantly reduced.
机译:本文通过寻求一种包含低秩(LR),关节稀疏度(JS)和总变化(TV)普通的模型来解决静止目标的壁杂浊雷达成像(TWRI)的壁杂波成像(TWRI)的问题。 。所提出的模型的动机是LR规范器捕获墙壁杂波的低维结构; JS保证了频道图像中的少数目标占据占用和稀疏性概况的相似性;电视规范器宣传目标区域的空间连续性,并减轻背景噪音。壁杂波缓解和目标图像重建的任务被制定为包括LR,JS和TV正则化术语的优化问题。为了有效地处理该问题,引入了一种基于前后近梯度分裂技术的迭代算法,其捕获壁杂波并同时产生目标图像。在压缩感测场景下,在真实雷达数据上进行了广泛的实验。结果表明,即使雷达测量显着降低,该建议的模型也增强了目标定位和杂波缓解。

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