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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing. >MCA-Based Clutter Reduction From Migrated GPR Data of Shallowly Buried Point Target
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MCA-Based Clutter Reduction From Migrated GPR Data of Shallowly Buried Point Target

机译:基于MCA的浅埋点目标的迁移GPR数据减少杂波

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Reducing clutter is an important process in terms of improving the detection of targets when using ground penetrating radar (GPR), especially in the case of overlapping target responses and clutter. We present an alternative scheme to remove clutter from monostatic GPR data by combining migration and morphology component analysis (MCA). A simple phase shift migration is first performed on received B-scan data. In the migrated B-scan, clutter, and useful target responses exhibit different morphologies. The clutter appears to be horizontal stripes and the hyperbolic reflection from the target is refocused into an enhanced point-like shape. Subsequently, an overcomplete dictionary is constructed to discriminatively and sparsely represent each morphology based on the simulated GPR data. In particular, the 2-D undecimated discrete wavelet transform is used for the target component, and the 2-D curvelet atoms are used for the clutter. Then, the MCA technique is exploited to sparsely separate the two different components, which leads to the clutter reduction. The sparse representation of 2-D finite-difference-time-domain-based synthetic GPR data illustrates the validity of the overcomplete dictionary. In this paper, the proposed clutter removal method is tested on a synthetic model of point-like targets and real data from buried landmines. The migration concentrates the refracted signals from landmines to their origins, and the shapes of the landmines can be clearly defined. The results of the clutter reduction suggest that the proposed method is more effective than the method implemented directly on the B-scan data and the traditional mean subtraction.
机译:就使用探地雷达(GPR)而言,减少杂波是改善目标检测的重要过程,尤其是在目标响应和杂波重叠的情况下。我们提出了一种替代方案,通过结合迁移和形态成分分析(MCA)从单基地GPR数据中消除混乱。首先对接收到的B扫描数据执行简单的相移迁移。在迁移的B扫描中,杂波和有用的目标响应呈现出不同的形态。杂波似乎是水平条纹,并且来自目标的双曲线反射重新聚焦为增强的点状形状。随后,基于模拟的GPR数据,构造了一个过于完备的词典来区分和稀疏地表示每种形态。特别地,将二维未抽取的离散小波变换用于目标分量,并将二维curvelet原子用于杂波。然后,利用MCA技术来稀疏地分离两个不同的组件,从而减少了杂波。基于二维有限差分时域的合成GPR数据的稀疏表示说明了超完备词典的有效性。在本文中,在点状目标和掩埋地雷的真实数据的综合模型上测试了所提出的杂波去除方法。迁移将来自地雷的折射信号集中到其起源,并且可以清楚地定义地雷的形状。减少杂波的结果表明,与直接在B扫描数据和传统的均值减法上实现的方法相比,该方法更有效。

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