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Low-Rank Matrix Recovery Approach for Clutter Rejection in Real-Time IR-UWB Radar-Based Moving Target Detection

机译:基于实时IR-UWB雷达的运动目标检测中低杂波抑制的低秩矩阵恢复方法

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摘要

The detection of a moving target using an IR-UWB Radar involves the core task of separating the waves reflected by the static background and by the moving target. This paper investigates the capacity of the low-rank and sparse matrix decomposition approach to separate the background and the foreground in the trend of UWB Radar-based moving target detection. Robust PCA models are criticized for being batched-data-oriented, which makes them inconvenient in realistic environments where frames need to be processed as they are recorded in real time. In this paper, a novel method based on overlapping-windows processing is proposed to cope with online processing. The method consists of processing a small batch of frames which will be continually updated without changing its size as new frames are captured. We prove that RPCA (via its Inexact Augmented Lagrange Multiplier (IALM) model) can successfully separate the two subspaces, which enhances the accuracy of target detection. The overlapping-windows processing method converges on the optimal solution with its batch counterpart (i.e., processing batched data with RPCA), and both methods prove the robustness and efficiency of the RPCA over the classic PCA and the commonly used exponential averaging method.
机译:使用IR-UWB雷达检测移动目标涉及分离静态背景和移动目标反射的波的核心任务。本文研究了低秩稀疏矩阵分解方法在基于UWB雷达的运动目标检测趋势中分离背景和前景的能力。健壮的PCA模型被批评为面向批处理数据,这使得它们在现实环境中不方便使用,在现实环境中,在实时记录帧时需要对其进行处理。本文提出了一种基于重叠窗口处理的新方法来应对在线处理。该方法包括处理一小批帧,这些帧将不断更新,而不会随着捕获新帧而改变其大小。我们证明RPCA(通过其不精确增强拉格朗日乘数(IALM)模型)可以成功分离两个子空间,从而提高了目标检测的准确性。重叠窗口处理方法与其批处理对应项(即使用RPCA处理批处理数据)收敛于最佳解决方案,并且这两种方法都证明了RPCA优于经典PCA和常用的指数平均方法的鲁棒性和效率。

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