International audienceThe paper addresses the problem of approximating the detector distribution used in target detection embedded in a disturbance composed of a low rank Gaussian noise and a white Gaussian noise. In this context, it is interesting to use an adaptive version of the Low Rank Normalized Matched Filter (LR-ANMF) detector, which is a function of the estimated projector onto the low rank noise subspace. We will show that the traditional approximation of the LR-ANMF detector distribution is not always the better one. In this paper, we propose to perform its limits when the number of secondary data K and the data dimension m both tend to infinity at the same rate m/K → c ∈ (0, ∞). Then, we give the theoretical distributions of the...
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 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 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 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 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 ...