We analyze the performance of several algorithms designed to solve the inverse sparse problem when they are applied to array signal processing. Specifically we study the error on the estimation of the complex envelope and the direction of arrival of signals of interest in the presence of interference sources using a uniform linear array. In particular, we compare the performance of the Enhanced Sparse Bayesian Learning (ESBL) algorithm against different algorithms tailored to this scenario. Since the former exploits interference information to diminish its unwanted effects, we find that it provides a reasonable tradeoff between runtime and estimation error.Fil: Pazos, Sebastian. Universidad Nacional de la Plata. Facultad de Ingenieria. Depa...
[ANGLÈS] This master thesis proposes a new algorithm for finding the angles of arrival of multiple u...
This work deals with directional of arrival (DOA) estimation with a large antenna array. We first de...
This thesis builds upon the problem of sparse signal recovery from the Bayesian standpoint. The adva...
This dissertation details three approaches for direction-of-arrival (DOA) estimation or beamforming ...
In this paper we address the problem of sparse signal reconstruction. We propose a new algorithm tha...
International audienceIn the last few years, we witnessed to an extraordinary and still growing deve...
In this article we analyze the performance of nonuniform linear arrays for Direction of Arrival (DOA...
Direction of arrival (DOA) estimation from array observations in a noisy environment is discussed. T...
This paper devises a tunable detection architecture to deal with mismatched signals embedded in Gaus...
This paper devises a tunable detection architecture to deal with mismatched signals embedded in Gaus...
This paper devises a tunable detection architecture to deal with mismatched signals embedded in Gaus...
This paper devises a tunable detection architecture to deal with mismatched signals embedded in Gaus...
Abstract—This paper examines the effectiveness of a sparse Bayesian algorithm to estimate multivaria...
In this paper, the problem of direction of arrival estimation is addressed by employing Bayesian lea...
[ANGLÈS] This master thesis proposes a new algorithm for finding the angles of arrival of multiple u...
[ANGLÈS] This master thesis proposes a new algorithm for finding the angles of arrival of multiple u...
This work deals with directional of arrival (DOA) estimation with a large antenna array. We first de...
This thesis builds upon the problem of sparse signal recovery from the Bayesian standpoint. The adva...
This dissertation details three approaches for direction-of-arrival (DOA) estimation or beamforming ...
In this paper we address the problem of sparse signal reconstruction. We propose a new algorithm tha...
International audienceIn the last few years, we witnessed to an extraordinary and still growing deve...
In this article we analyze the performance of nonuniform linear arrays for Direction of Arrival (DOA...
Direction of arrival (DOA) estimation from array observations in a noisy environment is discussed. T...
This paper devises a tunable detection architecture to deal with mismatched signals embedded in Gaus...
This paper devises a tunable detection architecture to deal with mismatched signals embedded in Gaus...
This paper devises a tunable detection architecture to deal with mismatched signals embedded in Gaus...
This paper devises a tunable detection architecture to deal with mismatched signals embedded in Gaus...
Abstract—This paper examines the effectiveness of a sparse Bayesian algorithm to estimate multivaria...
In this paper, the problem of direction of arrival estimation is addressed by employing Bayesian lea...
[ANGLÈS] This master thesis proposes a new algorithm for finding the angles of arrival of multiple u...
[ANGLÈS] This master thesis proposes a new algorithm for finding the angles of arrival of multiple u...
This work deals with directional of arrival (DOA) estimation with a large antenna array. We first de...
This thesis builds upon the problem of sparse signal recovery from the Bayesian standpoint. The adva...