Compressive Sampling (CS) describes a method for reconstructing high-dimensional sparse signals from a small number of linear measurements. Fundamental to the success of CS is the existence of special measurement matrices which satisfy the so-called Restricted Isometry Property (RIP). In essence, a matrix satisfying RIP is such that the lengths of all sufficiently sparse vectors are approximately preserved under transformation by the matrix. In this paper we describe a natural consequence of this property – if a matrix satisfies RIP, then acute angles between sparse vectors are also approximately preserved. We formulate this property as a Generalized Restricted Isometry Property (GRIP) and describe one application in robust signal detection...
Abstract—The angle between two compressed sparse vectors subject to the norm/distance constraints im...
In this thesis we give an overview of the notion of compressed sensing together with some special ty...
Abstract—This paper proposes greedy numerical schemes to compute lower bounds of the restricted isom...
Abstract. Compressed Sensing (CS) seeks to recover an unknown vector with N entries by making far fe...
The Restricted Isometry Property (RIP) introduced by Candés and Tao is a fundamental property in co...
Compressed sensing (CS) seeks to recover an unknown vector with N entries by making far fewer than N...
In compressive sensing, the Restricted Isometry Property is an analytical condition on the measureme...
Compressive (or compressed) sensing (CS) is an emerging methodology in computational signal processi...
In Compressive Sensing, the Restricted Isometry Property (RIP) ensures that robust recovery of spars...
Compressive sampling (CS) refers to a generalized sampling paradigm in which observations are inner ...
MI: Global COE Program Education-and-Research Hub for Mathematics-for-IndustryグローバルCOEプログラム「マス・フォア・イ...
This paper introduces a new general theory of compressed sensing. We give a natural generalization o...
We consider two theorems from the theory of compressive sensing. Mainly a theorem concerning uniform...
In the theory of compressed sensing, restricted isometry analysis has become a standard tool for stu...
In the theory of compressed sensing, restricted isometry analysis has become a standard tool for stu...
Abstract—The angle between two compressed sparse vectors subject to the norm/distance constraints im...
In this thesis we give an overview of the notion of compressed sensing together with some special ty...
Abstract—This paper proposes greedy numerical schemes to compute lower bounds of the restricted isom...
Abstract. Compressed Sensing (CS) seeks to recover an unknown vector with N entries by making far fe...
The Restricted Isometry Property (RIP) introduced by Candés and Tao is a fundamental property in co...
Compressed sensing (CS) seeks to recover an unknown vector with N entries by making far fewer than N...
In compressive sensing, the Restricted Isometry Property is an analytical condition on the measureme...
Compressive (or compressed) sensing (CS) is an emerging methodology in computational signal processi...
In Compressive Sensing, the Restricted Isometry Property (RIP) ensures that robust recovery of spars...
Compressive sampling (CS) refers to a generalized sampling paradigm in which observations are inner ...
MI: Global COE Program Education-and-Research Hub for Mathematics-for-IndustryグローバルCOEプログラム「マス・フォア・イ...
This paper introduces a new general theory of compressed sensing. We give a natural generalization o...
We consider two theorems from the theory of compressive sensing. Mainly a theorem concerning uniform...
In the theory of compressed sensing, restricted isometry analysis has become a standard tool for stu...
In the theory of compressed sensing, restricted isometry analysis has become a standard tool for stu...
Abstract—The angle between two compressed sparse vectors subject to the norm/distance constraints im...
In this thesis we give an overview of the notion of compressed sensing together with some special ty...
Abstract—This paper proposes greedy numerical schemes to compute lower bounds of the restricted isom...