Abstract. We give the first computationally tractable and almost optimal solution to the problem of one-bit compressed sensing, showing how to accurately recover an s-sparse vector x ∈ Rn from the signs of O(s log2(n/s)) random linear measurements of x. The recovery is achieved by a simple linear program. This result extends to approximately sparse vectors x. Our result is universal in the sense that with high probability, one measurement scheme will successfully recover all sparse vectors simultaneously. The argument is based on solving an equivalent geometric problem on random hyperplane tessellations. 1
In one-bit compressed sensing, previous results state that sparse signals may be robustly recovered ...
In this paper we consider memoryless one-bit compressed sensing with randomly subsampled Gaussian ci...
In this paper we consider memoryless one-bit compressed sensing with randomly subsampled Gaussian ci...
We give the first computationally tractable and almost optimal solution to the problem of one-bit co...
While the conventional compressive sensing as-sumes measurements of infinite precision, one-bit comp...
Abstract. This paper develops theoretical results regarding noisy 1-bit compressed sensing and spars...
Unlike compressive sensing where the measurement outputs are assumed to be real-valued and have infi...
Unlike compressive sensing where the measurement outputs are assumed to be real-valued and have infi...
Compressed sensing (CS) is a relatively new branch of mathematics with very interesting applications...
Compressed sensing (CS) is a relatively new branch of mathematics with very interesting applications...
We propose a new algorithm to recover a sparse signal from a system of linear measurements. By proje...
1-bit compressing sensing (CS) is an important class of sparse optimization problems. This paper foc...
Compressed sensing is a novel research area, which was introduced in 2006, and since then has alread...
In this thesis we give an overview of the notion of compressed sensing together with some special ty...
In this paper we consider memoryless one-bit compressed sensing with randomly subsampled Gaussian ci...
In one-bit compressed sensing, previous results state that sparse signals may be robustly recovered ...
In this paper we consider memoryless one-bit compressed sensing with randomly subsampled Gaussian ci...
In this paper we consider memoryless one-bit compressed sensing with randomly subsampled Gaussian ci...
We give the first computationally tractable and almost optimal solution to the problem of one-bit co...
While the conventional compressive sensing as-sumes measurements of infinite precision, one-bit comp...
Abstract. This paper develops theoretical results regarding noisy 1-bit compressed sensing and spars...
Unlike compressive sensing where the measurement outputs are assumed to be real-valued and have infi...
Unlike compressive sensing where the measurement outputs are assumed to be real-valued and have infi...
Compressed sensing (CS) is a relatively new branch of mathematics with very interesting applications...
Compressed sensing (CS) is a relatively new branch of mathematics with very interesting applications...
We propose a new algorithm to recover a sparse signal from a system of linear measurements. By proje...
1-bit compressing sensing (CS) is an important class of sparse optimization problems. This paper foc...
Compressed sensing is a novel research area, which was introduced in 2006, and since then has alread...
In this thesis we give an overview of the notion of compressed sensing together with some special ty...
In this paper we consider memoryless one-bit compressed sensing with randomly subsampled Gaussian ci...
In one-bit compressed sensing, previous results state that sparse signals may be robustly recovered ...
In this paper we consider memoryless one-bit compressed sensing with randomly subsampled Gaussian ci...
In this paper we consider memoryless one-bit compressed sensing with randomly subsampled Gaussian ci...