Abstract-This paper uses the canonical correlation decomposition (CCD) framework to investigate the spatial correlation of sources captured using two spatially separated sensor arrays. The relationship between the canonical correlations of the observed signals and the spatial correlation coefficients of the source signals are first derived, including an analysis of the changes seen in this relationship under certain noise level and array geometry assumptions. Additionally, simulation results are presented that demonstrate the effects of different noise levels and array geometries on the canonical correlations for the case of two uniform linear sparse arrays
The concept of correlation subspaces was recently introduced in array processing literature by Rahma...
This paper focuses on the analysis of spatially correlated functional data. We propose a parametric ...
This paper investigates the estimation of the two-dimensional direction of arrival (2D-DOA) of sound...
This work provides analytical results on the canonical cor-relation analysis (CCA) of data sets from...
In underwater acoustics, environmental fluctuations can lead to a loss of coherence in sonar arrays....
Direction-of-arrival (DOA) estimation finds applications in many areas of science and engineering. I...
Compressed sensing is an emerging field, which proposes that a small collection of linear projection...
University of Minnesota Ph.D. dissertation. February 2013. Major: Electrical Engineering. Advisor: P...
Cross correlation of received acoustic signals is a common method for estimating the location of an ...
Most array processing algorithms are based on the assump-tion that the signals are generated by poin...
In this paper, we propose the use of a sparse uniform lin-ear array to estimate the direction-of-arr...
This paper investigates the estimation of the two-dimensional direction of arrival (2D-DOA) of sound...
In this paper, three different base-station antenna (BSA) configurations are compared in terms of in...
This thesis presents a novel spatial spectrum estimation technique, ∂-MUSIC, for discriminating betw...
This paper presents a demonstration of ambient acoustic noise processing on a set of free floating o...
The concept of correlation subspaces was recently introduced in array processing literature by Rahma...
This paper focuses on the analysis of spatially correlated functional data. We propose a parametric ...
This paper investigates the estimation of the two-dimensional direction of arrival (2D-DOA) of sound...
This work provides analytical results on the canonical cor-relation analysis (CCA) of data sets from...
In underwater acoustics, environmental fluctuations can lead to a loss of coherence in sonar arrays....
Direction-of-arrival (DOA) estimation finds applications in many areas of science and engineering. I...
Compressed sensing is an emerging field, which proposes that a small collection of linear projection...
University of Minnesota Ph.D. dissertation. February 2013. Major: Electrical Engineering. Advisor: P...
Cross correlation of received acoustic signals is a common method for estimating the location of an ...
Most array processing algorithms are based on the assump-tion that the signals are generated by poin...
In this paper, we propose the use of a sparse uniform lin-ear array to estimate the direction-of-arr...
This paper investigates the estimation of the two-dimensional direction of arrival (2D-DOA) of sound...
In this paper, three different base-station antenna (BSA) configurations are compared in terms of in...
This thesis presents a novel spatial spectrum estimation technique, ∂-MUSIC, for discriminating betw...
This paper presents a demonstration of ambient acoustic noise processing on a set of free floating o...
The concept of correlation subspaces was recently introduced in array processing literature by Rahma...
This paper focuses on the analysis of spatially correlated functional data. We propose a parametric ...
This paper investigates the estimation of the two-dimensional direction of arrival (2D-DOA) of sound...