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A modified IIN algorithm for DOA estimation based on sparse representation

机译:一种基于稀疏表示的改进的IIN DOA估计算法

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Recently, sparse representation has been widely used in localization and bearing estimation. The basic idea of the general sparse direction-of-arrival (DOA) estimation method is to divide the space into discrete grids. But the transmission signal's DOA doesn't always fall on the discrete network. This paper reformulates the above problem by exploiting the sparsity representation based on the modified iterative interpolation (IIN) algorithm. First, the linear combination of eigenvectors of the array covariance matrix is used in this paper. The multiple measurement vectors (MMV) can be converted to a single measurement vector (SMV) for sparse solution calculation in this way. And this method can reduce high computation of the MMV. Then, an on-grid DOA estimation can be got by the orthogonal matching pursuit (OMP) algorithm. In order to get an off-grid DOA which is closer to the real one, the modified IIN algorithm is simulated based on the on-grid DOA estimation which is obtained by the OMP algorithm. In the modified IIN algorithm, the most matched dictionary atom with the real signal DOA and the two neighboring atoms whose difference is semi gird resolution are chosen and the corresponding vectors are regarded as the measurement vectors. The smallest and sub-smallest Euclidean distances between the measurement vectors or its residual are applied to further improve the DOA estimation. The essential idea of the algorithm is a coarse-to-fine estimation. We demonstrate the effectiveness of the method on simulated data by comparing the estimator variance with the the L1-SVD algorithm. Simulation results show that our approach can reduce the DOA estimation error caused by grid effect and own low computation load.
机译:近年来,稀疏表示已被广泛用于定位和方位估计。通用稀疏到达方向(DOA)估计方法的基本思想是将空间分成离散的网格。但是传输信号的DOA并不总是落在离散网络上。本文通过利用基于改进迭代插值(IIN)算法的稀疏表示来重新构造上述问题。首先,本文使用阵列协方差矩阵的特征向量的线性组合。可以将多个测量向量(MMV)转换为单个测量向量(SMV),以进行稀疏解计算。并且该方法可以减少MMV的高计算量。然后,可以通过正交匹配追踪(OMP)算法获得并网DOA估计。为了获得更接近实际的离网DOA,基于OMP算法获得的在线DOA估计,对改进的IIN算法进行了仿真。在改进的IIN算法中,选择具有真实信号DOA的最匹配的字典原子和两个半原子分辨率差的相邻原子,并将相应的矢量视为测量矢量。测量矢量之间的最小和次最小欧几里得距离或其残差被应用于进一步改善DOA估计。该算法的基本思想是从粗到精的估计。通过将估计量方差与L1-SVD算法进行比较,我们证明了该方法对模拟数据的有效性。仿真结果表明,该方法可以减少网格效应引起的DOA估计误差,并具有较低的计算量。

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