Title :
Blind beamforming on a randomly distributed sensor array system
Author :
Yao, Kung ; Hudson, Ralph E. ; Reed, Chris W. ; Chen, Daching ; Lorenzelli, Flavio
Author_Institution :
Dept. of Electr. Eng., California Univ., Los Angeles, CA, USA
fDate :
10/1/1998 12:00:00 AM
Abstract :
We consider a digital signal processing sensor array system, based on randomly distributed sensor nodes, for surveillance and source localization applications. In most array processing the sensor array geometry is fixed and known and the steering array vector/manifold information is used in beamformation. In this system, array calibration may be impractical due to unknown placement and orientation of the sensors with unknown frequency/spatial responses. This paper proposes a blind beamforming technique, using only the measured sensor data, to form either a sample data or a sample correlation matrix. The maximum power collection criterion is used to obtain array weights from the dominant eigenvector associated with the largest eigenvalue of a matrix eigenvalue problem. Theoretical justification of this approach uses a generalization of Szego´s (1958) theory of the asymptotic distribution of eigenvalues of the Toeplitz form. An efficient blind beamforming time delay estimate of the dominant source is proposed. Source localization based on a least squares (LS) method for time delay estimation is also given. Results based on analysis, simulation, and measured acoustical sensor data show the effectiveness of this beamforming technique for signal enhancement and space-time filtering
Keywords :
Toeplitz matrices; acoustic arrays; acoustic signal processing; array signal processing; correlation methods; delay estimation; direction-of-arrival estimation; eigenvalues and eigenfunctions; filtering theory; least squares approximations; signal sampling; surveillance; RF communications; Szego´s theory; Toeplitz matrix; array calibration; array processing; array weights; asymptotic distribution; blind beamforming; digital signal processing; eigenvalue; eigenvector; frequency/spatial responses; least squares method; matrix eigenvalue problem; maximum power collection criterion; measured acoustical sensor data; measured sensor data; randomly distributed sensor array system; randomly distributed sensor nodes; sample correlation matrix; sample data; sensor array geometry; signal enhancement; simulation; source localization; space-time filtering; steering array vector/manifold information; surveillance; time delay estimation; Array signal processing; Delay effects; Delay estimation; Digital signal processing; Eigenvalues and eigenfunctions; Information geometry; Sensor arrays; Sensor systems; Sensor systems and applications; Surveillance;
Journal_Title :
Selected Areas in Communications, IEEE Journal on