The SPS-LASSO has recently been introduced as a solution to the problem of regularization parameter selection in the complex-valued LASSO problem. Still, the dependence on the grid size and the polynomial time of performing convex optimization technique in each iteration, in addition to the deficiencies in the low noise regime, confines its performance for Direction of Arrival (DOA) estimation. This work presents methods to apply LASSO without grid size limitation and with less complexity. As we show by simulations, the proposed methods loose a negligible performance compared to the Maximum Likelihood (ML) estimator, which needs a combinatorial search We also show by simulations that compared to practical implementations of ML, the proposed...
International audienceLeveraging on the convexity of the Lasso problem , screening rules help in acc...
A classical problem that arises in numerous signal processing applications asks for the reconstructi...
A recent line of work has established accurate predictions of the mean squared-error (MSE) performan...
The SPS-LASSO has recently been introduced as a solution to the problem of regularization parameter ...
The LASSO sparse regression method has recently received attention in a variety of applications from...
Since the advent of the l(1) regularized least squares method (LASSO), a new line of research has em...
The l(1) norm regularized least square technique has been proposed as an efficient method to calcula...
The idea of representing a signal in a classical computing machine has played a central role in the ...
The 1 norm regularized least square technique has been proposed as an efficient method to calculate ...
In this paper, we propose a sequential, fast DOA tracking technique using the measurements of a unif...
The direction of arrival (DOA) estimation problem is formulated in a compressive sensing (CS) framew...
This paper investigates the consistency of the LASSO-based DOA estimation of the narrow-band signals...
The idea of representing a signal in a classical computing machine has played a central role in the ...
Channel data measurement and tap estimation with the LASSO estimator/ detector (Least Absolute Shrin...
On the resolution of the LASSO-based DOA estimation method This document has been downloaded from Ch...
International audienceLeveraging on the convexity of the Lasso problem , screening rules help in acc...
A classical problem that arises in numerous signal processing applications asks for the reconstructi...
A recent line of work has established accurate predictions of the mean squared-error (MSE) performan...
The SPS-LASSO has recently been introduced as a solution to the problem of regularization parameter ...
The LASSO sparse regression method has recently received attention in a variety of applications from...
Since the advent of the l(1) regularized least squares method (LASSO), a new line of research has em...
The l(1) norm regularized least square technique has been proposed as an efficient method to calcula...
The idea of representing a signal in a classical computing machine has played a central role in the ...
The 1 norm regularized least square technique has been proposed as an efficient method to calculate ...
In this paper, we propose a sequential, fast DOA tracking technique using the measurements of a unif...
The direction of arrival (DOA) estimation problem is formulated in a compressive sensing (CS) framew...
This paper investigates the consistency of the LASSO-based DOA estimation of the narrow-band signals...
The idea of representing a signal in a classical computing machine has played a central role in the ...
Channel data measurement and tap estimation with the LASSO estimator/ detector (Least Absolute Shrin...
On the resolution of the LASSO-based DOA estimation method This document has been downloaded from Ch...
International audienceLeveraging on the convexity of the Lasso problem , screening rules help in acc...
A classical problem that arises in numerous signal processing applications asks for the reconstructi...
A recent line of work has established accurate predictions of the mean squared-error (MSE) performan...