Title :
Optimized algorithms for detection of sparse targets in heterogeneous Gaussian noise
Author :
Bandiera, Francesco ; Guerriero, Marco ; Ricci, Giuseppe
Author_Institution :
Dip. Ing. dell´´Innovazione, Univ. of Salento, Lecce, Italy
Abstract :
In this paper we propose two adaptive detection algorithms for sparse targets embedded in heterogeneous AR Gaussian noise. The first one solves the problem of estimating the subset of cells containing a scatterer via the GLRT principle, while the latter models the number of scatterers as a random parameter and relies on the use of quantized statistics. A preliminary performance assessment, conducted by Monte Carlo simulation, has shown that both solutions allow to reduce the detrimental effects, in terms of collapsing loss, suffered by conventional solutions. In particular the former algorithm is to be preferred in terms of performance while the latter has a lower computational complexity.
Keywords :
Gaussian noise; Monte Carlo methods; adaptive radar; autoregressive processes; radar detection; radar resolution; radar tracking; target tracking; GLRT principle; Monte Carlo simulation; adaptive radar detection; autoregressive process; collapsing loss; heterogeneous AR Gaussian noise; high-resolution radar; optimized algorithm; quantized statistics; sparse target detection; Autoregressive processes; Computational complexity; Detection algorithms; Gaussian noise; Performance loss; Radar detection; Radar scattering; Scattering parameters; Statistics; Testing; Adaptive Radar Detection; Autoregressive Processes; Generalized Likelihood Ratio Test; High-Resolution Radars; Sparse Targets;
Conference_Titel :
Radar Conference - Surveillance for a Safer World, 2009. RADAR. International
Conference_Location :
Bordeaux
Print_ISBN :
978-2-912328-55-7