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Minimum-norm with an application to estimation of bearing angles in passive underwater multi-target scenario

机译:最小范数及其在被动水下多目标场景中方位角估计中的应用

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Eigen decomposition methods like minimum-norm, MUSIC are used either for frequency estimation of signals or for finding the bearing angles of the sources. In passive underwater multitarget scenario, the requirement is to find both the targets frequency and location simultaneously. Minimum-norm along with minimum data length (MDL) is used for this purpose. The correlation matrix is constructed and the eigen values and their eigen vectors are found. Then the number of targets are found using MDL criterion. Considering a single location, the array manifold vector is constructed for each frequency. Then the power is estimated using the minimum-norm algorithm. The location (in terms of angle) and frequency of the target are indicated by the maximum power. This procedure is repeated for other locations for detecting other targets.
机译:本征分解方法(如最小范数,MUSIC)用于信号的频率估计或查找源的方位角。在被动水下多目标场景中,要求同时找到目标频率和位置。为此,使用了最小范数和最小数据长度(MDL)。构造相关矩阵,并找到特征值及其特征向量。然后使用MDL准则找到目标数量。考虑到单个位置,针对每个频率构造阵列流形矢量。然后,使用最小范数算法估算功率。目标的位置(以角度表示)和频率由最大功率指示。对其他位置重复此过程以检测其他目标。

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