International audienceDictionary based sparse estimators are based on the matching of continuous parameters of interest to a discretized sampling grid. Generally, the parameters of interest do not lie on this grid and there exists an estimator bias even at high Signal to Noise Ratio (SNR). This is the off-grid problem. In this work, we propose and study analytical expressions of the Bayesian Mean Square Error (BMSE) of dictionary based biased estimators at high SNR. We also show that this class of estimators is efficient and thus reaches the Bayesian Cramér-Rao Bound (BCRB) at high SNR. The proposed results are illustrated in the context of line spectra analysis and several popular sparse estimators are compared to our closed-form expressio...
International audienceRobust estimation is an important and timely research subject. In this paper, ...
International audienceWe assume the direct sum A ⊕ B for the signal subspace. As a result of post-me...
If a signal is known to have a sparse representation with respect to a frame, it can be estimated ...
Abstract—Dictionary based sparse estimators are based on the matching of continuous parameters of in...
International audienceDictionary based sparse estimators are based on the matching of continuous par...
International audienceCompressed sensing (CS) enables measurement reconstruction by using sampling r...
International audienceCompressed sensing (CS) is a promising emerging domain which outperforms the c...
The problem considered in this paper is to estimate a deter-ministic vector representing elements in...
International audienceCompressed sensing theory promises to sample sparse signals using a limited nu...
The goal of this paper is to characterize the best achievable performance for the problem of estimat...
International audienceIn typical Compressed Sensing operational contexts, the measurement vector y i...
This paper focusses on the sparse estimation in the situation where both the the sens-ing matrix and...
One of the prime goals of statistical estimation theory is the develop-ment of performance bounds wh...
International audienceCompressed Sensing (CS) is now a well-established research area and a plethora...
International audienceRobust estimation is an important and timely research subject. In this paper, ...
International audienceWe assume the direct sum A ⊕ B for the signal subspace. As a result of post-me...
If a signal is known to have a sparse representation with respect to a frame, it can be estimated ...
Abstract—Dictionary based sparse estimators are based on the matching of continuous parameters of in...
International audienceDictionary based sparse estimators are based on the matching of continuous par...
International audienceCompressed sensing (CS) enables measurement reconstruction by using sampling r...
International audienceCompressed sensing (CS) is a promising emerging domain which outperforms the c...
The problem considered in this paper is to estimate a deter-ministic vector representing elements in...
International audienceCompressed sensing theory promises to sample sparse signals using a limited nu...
The goal of this paper is to characterize the best achievable performance for the problem of estimat...
International audienceIn typical Compressed Sensing operational contexts, the measurement vector y i...
This paper focusses on the sparse estimation in the situation where both the the sens-ing matrix and...
One of the prime goals of statistical estimation theory is the develop-ment of performance bounds wh...
International audienceCompressed Sensing (CS) is now a well-established research area and a plethora...
International audienceRobust estimation is an important and timely research subject. In this paper, ...
International audienceWe assume the direct sum A ⊕ B for the signal subspace. As a result of post-me...
If a signal is known to have a sparse representation with respect to a frame, it can be estimated ...