Direction of arrival (DOA) estimation in array processing using uniform/sparse linear arrays is concerned in this paper. While sparse methods via approximate parameter discretization have been popular in the past decade, the discretization may cause problems, e.g., modeling error and increased computations due to dense sampling. In this paper, an exact discretization-free method, named as sparse and parametric approach (SPA), is proposed for uniform and sparse linear arrays. SPA carries out parameter estimation in the continuous range based on well-established covariance fitting criteria and convex optimization. It guarantees to produce a sparse parameter estimate without discretization required by existing sparse methods. Theoretical analy...
In this article, a difference-coarray-based direction of arrival (DOA) method is introduced, which u...
There is a problem that complex operation which leads to a heavy calculation burden is required when...
Abstract A novel algorithm is presented based on sparse multiple measurement vector (MMV) model for ...
Direction of arrival (DOA) estimation in array processing using uniform/sparse linear arrays is conc...
Array signal processing is currently widely used in many fields. It has been a hot research area for...
Abstract—This paper presents an effective weighted-L1-sparse representation of array covariance vect...
University of Minnesota Ph.D. dissertation. February 2013. Major: Electrical Engineering. Advisor: P...
An enhanced smoothed l0-norm algorithm for the passive phased array system, which uses the covarianc...
peer reviewedParameter estimation from noisy and one-bit quantized data has become an important topi...
This paper concerns wideband direction of arrival (DoA) estimation with sparse linear arrays (SLAs)....
This dissertation details three approaches for direction-of-arrival (DOA) estimation or beamforming ...
Regular fully filled antenna arrays have been widely used in direction of arrival (DOA) estimation. ...
This paper studies direction of arrival (DoA) estimation with an antenna array using sparse signal r...
This paper presents an efficient sparse representation approach to direction-of-arrival (DOA) estima...
In this paper, we propose the use of a sparse uniform lin-ear array to estimate the direction-of-arr...
In this article, a difference-coarray-based direction of arrival (DOA) method is introduced, which u...
There is a problem that complex operation which leads to a heavy calculation burden is required when...
Abstract A novel algorithm is presented based on sparse multiple measurement vector (MMV) model for ...
Direction of arrival (DOA) estimation in array processing using uniform/sparse linear arrays is conc...
Array signal processing is currently widely used in many fields. It has been a hot research area for...
Abstract—This paper presents an effective weighted-L1-sparse representation of array covariance vect...
University of Minnesota Ph.D. dissertation. February 2013. Major: Electrical Engineering. Advisor: P...
An enhanced smoothed l0-norm algorithm for the passive phased array system, which uses the covarianc...
peer reviewedParameter estimation from noisy and one-bit quantized data has become an important topi...
This paper concerns wideband direction of arrival (DoA) estimation with sparse linear arrays (SLAs)....
This dissertation details three approaches for direction-of-arrival (DOA) estimation or beamforming ...
Regular fully filled antenna arrays have been widely used in direction of arrival (DOA) estimation. ...
This paper studies direction of arrival (DoA) estimation with an antenna array using sparse signal r...
This paper presents an efficient sparse representation approach to direction-of-arrival (DOA) estima...
In this paper, we propose the use of a sparse uniform lin-ear array to estimate the direction-of-arr...
In this article, a difference-coarray-based direction of arrival (DOA) method is introduced, which u...
There is a problem that complex operation which leads to a heavy calculation burden is required when...
Abstract A novel algorithm is presented based on sparse multiple measurement vector (MMV) model for ...