论文标题
SAR层析成像中散射器检测2的顺序音乐算法通过强大的协方差增强3估计器
A Sequential MUSIC algorithm for Scatterers Detection 2 in SAR Tomography Enhanced by a Robust Covariance 3 Estimator
论文作者
论文摘要
合成孔径雷达(SAR)断层扫描(Tomosar)是提取城市基础设施高度信息的吸引力工具。由于音乐算法在源本地化中的广泛应用,因此当多个快照(外观)可用时,它是Tomosar中的合适解决方案。虽然古典音乐算法旨在估计散射器的整个反射率曲线,但顺序音乐算法适用于检测稀疏点状散射器。在这类方法中,连续取消是通过音乐能力谱的正交补体预测执行的。在这项工作中,提出了一种新的顺序音乐算法,称为递归协方差的音乐(RCC-Music)。与先前的顺序方法相比,这种方法具有更高的准确性,而计算成本的成本可以忽略不计。此外,为了提高RCC-Music的性能,它与最近称为相关子空间的协方差矩阵估计方法相结合。利用相关子空间方法会产生一个脱氧的协方差矩阵,进而提高了基于子空间的方法的准确性。提出了几个数值示例,以将所提出方法的性能与相关的最新方法进行比较。作为子空间方法,模拟结果证明了该方法在估计准确性和计算负载方面的效率。
Synthetic aperture radar (SAR) tomography (TomoSAR) is an appealing tool for the extraction of height information of urban infrastructures. Due to the widespread applications of the MUSIC algorithm in source localization, it is a suitable solution in TomoSAR when multiple snapshots (looks) are available. While the classical MUSIC algorithm aims to estimate the whole reflectivity profile of scatterers, sequential MUSIC algorithms are suited for the detection of sparse point-like scatterers. In this class of methods, successive cancellation is performed through orthogonal complement projections on the MUSIC power spectrum. In this work, a new sequential MUSIC algorithm named recursive covariance canceled MUSIC (RCC-MUSIC), is proposed. This method brings higher accuracy in comparison with the previous sequential methods at the cost of a negligible increase in computational cost. Furthermore, to improve the performance of RCC-MUSIC, it is combined with the recent method of covariance matrix estimation called correlation subspace. Utilizing the correlation subspace method results in a denoised covariance matrix which in turn, increases the accuracy of subspace-based methods. Several numerical examples are presented to compare the performance of the proposed method with the relevant state-of-the-art methods. As a subspace method, simulation results demonstrate the efficiency of the proposed method in terms of estimation accuracy and computational load.