Title :
Convergence analysis of stochastically-constrained spatial and spatio-temporal adaptive processing for hot-clutter mitigation
Author :
Abramovich, Y.I. ; Gorokhov, A.Y. ; Spencer, N.K.
Author_Institution :
Cooperative Res. Centre for Sensor Signal & Inf. Process. (CSSIP), Mawson Lakes, SA, Australia
Abstract :
Further considers the use of spatio-temporal adaptive array processing in radar applications in order to remove nonstationary multipath interference (known as “hot clutter”). Since the spatio-temporal properties of hot clutter cannot be assumed constant over the coherent processing interval, conventional adaptive techniques fail to provide effective hot-clutter mitigation without simultaneously degrading the properties of the backscattered radar signals (known as “cold clutter”). The stochastically-constrained spatio-temporal adaptive processing (SC STAP) approach incorporates multiple data-dependent (“stochastic”) constraints to achieve effective hot-clutter suppression, whilst maintaining distortionless output cold-clutter post-processing stationarity. Here we discuss the efficiency of the algorithm with respect to the number of training snapshots
Keywords :
backscatter; convergence; covariance matrices; filtering theory; radar clutter; spatial filters; stochastic processes; backscattered radar signals; convergence analysis; distortionless output cold-clutter post-processing stationarity; hot-clutter mitigation; nonstationary multipath interference; spatio-temporal adaptive array processing; stochastically-constrained spatial adaptive processing; Australia; Convergence; Covariance matrix; Frequency; Interference; Jamming; Propagation delay; Radar clutter; Radar scattering; Signal processing;
Conference_Titel :
Information, Decision and Control, 1999. IDC 99. Proceedings. 1999
Conference_Location :
Adelaide, SA
Print_ISBN :
0-7803-5256-4
DOI :
10.1109/IDC.1999.754127