Nowadays, the development of efficient communication system is necessary for future networks. Compressive sensing was proposed as a technique to save storage and energy by compressing signals using simple linear transformations. Although compressed signals can be perfectly recovered, the complexity of the reconstruction operation is high. However, there are applications where compressive signals are processed directly in the compressed domain, with spectrum sensing being an example. Several works apply classical statistical detectors for extracting information from compressed signals, but an emerging concept, denoted as compressive learning, uses machine learning algorithms to extract information from compressed signals and it has promising...
Abstract—We describe a method of integrating Karhunen-Loève Transform (KLT) into compressive sensin...
Sparse linear models pose dual views toward data that are embodied in compressive sensing and sparse...
Thesis (Ph.D.)--University of Washington, 2013According to Nyquist Sampling theorem, a band-limited ...
Wide-band spectrum sensing is an approach for finding spectrum holes within a wideband signal with ...
Radio spectrum is an expensive resource and only licensed users have the right to use it. In the eme...
Abstract—In this paper, we investigate a spectrum-sensing algorithm for detecting spatial dimension ...
Cognitive radios impose challenges on the design of efficient signal detectors, including wide bandw...
In the recently proposed collaborative compressive sensing, the cognitive radios (CRs) sense the occ...
Abstract — In the emerging paradigm of interoperable network, the cognitive users are allowed to tra...
Spectrum sensing is the most important component in the cognitive radio (CR) technology. Spectrum se...
Wideband spectrum sensing is a challenging task due to the constraints of digital signal processing ...
Theoretical thesis.Bibliography: pages 149-163.1. Introduction -- 2. Literature review -- 3. Compres...
Abstract Sparsity is an attribute present in a myriad of natural signals and systems, occurring eit...
We consider the problem of spectrum sensing in a Cognitive Radio (CR) system when the primaries can ...
Abstract—In this paper, we demonstrate some applications of compressive sensing over networks. We ma...
Abstract—We describe a method of integrating Karhunen-Loève Transform (KLT) into compressive sensin...
Sparse linear models pose dual views toward data that are embodied in compressive sensing and sparse...
Thesis (Ph.D.)--University of Washington, 2013According to Nyquist Sampling theorem, a band-limited ...
Wide-band spectrum sensing is an approach for finding spectrum holes within a wideband signal with ...
Radio spectrum is an expensive resource and only licensed users have the right to use it. In the eme...
Abstract—In this paper, we investigate a spectrum-sensing algorithm for detecting spatial dimension ...
Cognitive radios impose challenges on the design of efficient signal detectors, including wide bandw...
In the recently proposed collaborative compressive sensing, the cognitive radios (CRs) sense the occ...
Abstract — In the emerging paradigm of interoperable network, the cognitive users are allowed to tra...
Spectrum sensing is the most important component in the cognitive radio (CR) technology. Spectrum se...
Wideband spectrum sensing is a challenging task due to the constraints of digital signal processing ...
Theoretical thesis.Bibliography: pages 149-163.1. Introduction -- 2. Literature review -- 3. Compres...
Abstract Sparsity is an attribute present in a myriad of natural signals and systems, occurring eit...
We consider the problem of spectrum sensing in a Cognitive Radio (CR) system when the primaries can ...
Abstract—In this paper, we demonstrate some applications of compressive sensing over networks. We ma...
Abstract—We describe a method of integrating Karhunen-Loève Transform (KLT) into compressive sensin...
Sparse linear models pose dual views toward data that are embodied in compressive sensing and sparse...
Thesis (Ph.D.)--University of Washington, 2013According to Nyquist Sampling theorem, a band-limited ...