International audienceThis paper introduces an improved Low Rank Adaptive Normalized Matched Filter (LR-ANMF) detector in a high dimensional (HD) context where the observation dimension is large and of the same order of magnitude than the sample size. To that end, the statistical analysis of the LR-ANMF, in a context where the target signal is disturbed by a spatially correlated Gaussian clutter and a spatially white Gaussian noise, is addressed. More specifically, the asymp-totic distribution under the null hypothesis is derived, in the regime where both the dimension M of the observations and the number N of samples converge to infinity at the same rate and when the clutter covariance matrix has fixed rank K. In particular, it is shown th...
International audienceWhen a possible target is embedded in a Low Rank (LR) Gaussian clutter (which ...
International audienceWhen a possible target is embedded in a Low Rank (LR) Gaussian clutter (which ...
International audienceWhen a possible target is embedded in a Low Rank (LR) Gaussian clutter (which ...
International audienceThis paper introduces an improved Low Rank Adaptive Normalized Matched Filter ...
International audienceThis paper introduces an improved Low Rank Adaptive Normalized Matched Filter ...
International audienceThis paper introduces an improved Low Rank Adaptive Normalized Matched Filter ...
International audienceThis paper introduces an improved Low Rank Adaptive Normalized Matched Filter ...
International audienceThis paper introduces an improved Low Rank Adaptive Normalized Matched Filter ...
International audienceThis paper introduces an improved Low Rank Adaptive Normalized Matched Filter ...
International audienceThe paper addresses the problem of approximating the detector distribution use...
International audienceThe paper addresses the problem of approximating the detector distribution use...
International audienceThe paper addresses the problem of approximating the detector distribution use...
International audienceThe paper addresses the problem of approximating the detector distribution use...
International audienceThe paper addresses the problem of approximating the detector distribution use...
International audienceWhen a possible target is embedded in a Low Rank (LR) Gaussian clutter (which ...
International audienceWhen a possible target is embedded in a Low Rank (LR) Gaussian clutter (which ...
International audienceWhen a possible target is embedded in a Low Rank (LR) Gaussian clutter (which ...
International audienceWhen a possible target is embedded in a Low Rank (LR) Gaussian clutter (which ...
International audienceThis paper introduces an improved Low Rank Adaptive Normalized Matched Filter ...
International audienceThis paper introduces an improved Low Rank Adaptive Normalized Matched Filter ...
International audienceThis paper introduces an improved Low Rank Adaptive Normalized Matched Filter ...
International audienceThis paper introduces an improved Low Rank Adaptive Normalized Matched Filter ...
International audienceThis paper introduces an improved Low Rank Adaptive Normalized Matched Filter ...
International audienceThis paper introduces an improved Low Rank Adaptive Normalized Matched Filter ...
International audienceThe paper addresses the problem of approximating the detector distribution use...
International audienceThe paper addresses the problem of approximating the detector distribution use...
International audienceThe paper addresses the problem of approximating the detector distribution use...
International audienceThe paper addresses the problem of approximating the detector distribution use...
International audienceThe paper addresses the problem of approximating the detector distribution use...
International audienceWhen a possible target is embedded in a Low Rank (LR) Gaussian clutter (which ...
International audienceWhen a possible target is embedded in a Low Rank (LR) Gaussian clutter (which ...
International audienceWhen a possible target is embedded in a Low Rank (LR) Gaussian clutter (which ...
International audienceWhen a possible target is embedded in a Low Rank (LR) Gaussian clutter (which ...