The problem of hypothesis testing in the Neyman–Pearson formulation is considered from a geometric viewpoint. In particular, a concise geometric interpretation of deterministic and random signal detection in the philosophy of information geometry is presented. In such a framework, both hypotheses and detectors can be treated as geometrical objects on the statistical manifold of a parameterized family of probability distributions. Both the detector and detection performance are geometrically elucidated in terms of the Kullback–Leibler divergence. Compared to the likelihood ratio test, the geometric interpretation provides a consistent but more comprehensive means to understand and deal with signal detection problems in a rather convenient ma...
A stochastic approach to resolution based on information distances computed from the geometry of dat...
The exponentially embedded family (EEF) of probability density functions (PDFs) is an important mode...
Abstract: This paper deals with geometry of covariance matrices to define new advanced Radar Doppler...
Using the tools of category theory and differential geometry, we extend the geometric notions conseq...
This paper proposes a radar target detection algorithm based on information geometry. In particular,...
International audienceBy introducing an appropriate representation of the observation, detection pro...
International audienceAssume that a N-dimensional noisy measurement vector is available via a N × R ...
In target detection and tracking, the resolvability of multiple closely spaced targets of the sensor...
The generalized likelihood ratio test (GLRT) for composite hypothesis testing problems is studied fr...
Detection is the first task in establishing a communication link, or tracking a target with a radar ...
The subject of detection of spatially distributed targets in non-Gaussian noise with unknown statist...
International audienceIn this paper, we use the theory of generalized likelihood ratio tests (GLRT) ...
A measure of the ability of a sensor array to resolve two closely spaced point sources in angle is p...
Probabilistic characteristics of coherent detection of reflected signals with the fully known parame...
Statistical Theory of Signal Detection, Second Edition provides an elementary introduction to the th...
A stochastic approach to resolution based on information distances computed from the geometry of dat...
The exponentially embedded family (EEF) of probability density functions (PDFs) is an important mode...
Abstract: This paper deals with geometry of covariance matrices to define new advanced Radar Doppler...
Using the tools of category theory and differential geometry, we extend the geometric notions conseq...
This paper proposes a radar target detection algorithm based on information geometry. In particular,...
International audienceBy introducing an appropriate representation of the observation, detection pro...
International audienceAssume that a N-dimensional noisy measurement vector is available via a N × R ...
In target detection and tracking, the resolvability of multiple closely spaced targets of the sensor...
The generalized likelihood ratio test (GLRT) for composite hypothesis testing problems is studied fr...
Detection is the first task in establishing a communication link, or tracking a target with a radar ...
The subject of detection of spatially distributed targets in non-Gaussian noise with unknown statist...
International audienceIn this paper, we use the theory of generalized likelihood ratio tests (GLRT) ...
A measure of the ability of a sensor array to resolve two closely spaced point sources in angle is p...
Probabilistic characteristics of coherent detection of reflected signals with the fully known parame...
Statistical Theory of Signal Detection, Second Edition provides an elementary introduction to the th...
A stochastic approach to resolution based on information distances computed from the geometry of dat...
The exponentially embedded family (EEF) of probability density functions (PDFs) is an important mode...
Abstract: This paper deals with geometry of covariance matrices to define new advanced Radar Doppler...