Abstract—Classical target detection schemes are usually ob-tained deriving the likelihood ratio under Gaussian hypothesis and replacing the unknown background parameters by their estimates. In this paper, the adaptive versions of the classical Matched Filter and the Normalized Matched Filter are analyzed for the case when the mean vector of the background is unknown and has to be estimated jointly with the covariance matrix, as it is the case in hyperspectral imaging. More precisely, theoretical closed form expressions for false-alarm regulation are derived and these results are extended to non-Gaussian cases using robust estimation procedures. Finally, simulations validate the theoretical contribution. I
International audienceIn hyperspectral imaging the replacement model where a target, if present, par...
International audienceWhen accounting for heterogeneity and non-Gaussianity of real hyperspectral da...
There are two broad classes of hyperspectral detection algorithms.1, 2 Algorithms in the first class...
Abstract—Classical target detection schemes are usually ob-tained deriving the likelihood ratio unde...
Abstract—Classical target detection schemes are usually ob-tained deriving the likelihood ratio unde...
International audienceOne of the main issue in detecting a target from an hyperspectral image relies...
Print ISBN: 978-1-4577-1003-2International audienceThis paper deals with hyperspectral detection in ...
Algorithms exploiting hyperspectral imagery for target detection have continually evolved to provide...
International audienceClassical target detection schemes are usually obtained by deriving the likeli...
This paper deals with hyperspectral detection in impulsive and/or non homogeneous background context...
One of the fundamental challenges for a hyperspectral imaging surveillance system is the detection o...
We consider the problem of detecting a signal of interest corrupted by Gaussian noise with unknown m...
Algorithms exploiting hyperspectral imagery for target detection have continually evolved to provide...
In this paper, we investigate the constant false-alarm rate (CFAR) property of the RX anomaly detect...
Real-time detection and identification of man-made objects or materials ("targets") from a...
International audienceIn hyperspectral imaging the replacement model where a target, if present, par...
International audienceWhen accounting for heterogeneity and non-Gaussianity of real hyperspectral da...
There are two broad classes of hyperspectral detection algorithms.1, 2 Algorithms in the first class...
Abstract—Classical target detection schemes are usually ob-tained deriving the likelihood ratio unde...
Abstract—Classical target detection schemes are usually ob-tained deriving the likelihood ratio unde...
International audienceOne of the main issue in detecting a target from an hyperspectral image relies...
Print ISBN: 978-1-4577-1003-2International audienceThis paper deals with hyperspectral detection in ...
Algorithms exploiting hyperspectral imagery for target detection have continually evolved to provide...
International audienceClassical target detection schemes are usually obtained by deriving the likeli...
This paper deals with hyperspectral detection in impulsive and/or non homogeneous background context...
One of the fundamental challenges for a hyperspectral imaging surveillance system is the detection o...
We consider the problem of detecting a signal of interest corrupted by Gaussian noise with unknown m...
Algorithms exploiting hyperspectral imagery for target detection have continually evolved to provide...
In this paper, we investigate the constant false-alarm rate (CFAR) property of the RX anomaly detect...
Real-time detection and identification of man-made objects or materials ("targets") from a...
International audienceIn hyperspectral imaging the replacement model where a target, if present, par...
International audienceWhen accounting for heterogeneity and non-Gaussianity of real hyperspectral da...
There are two broad classes of hyperspectral detection algorithms.1, 2 Algorithms in the first class...