This work focuses on exploiting both eigenvalues and eigenvectors for spectrum sensing in cognitive radio. First, we design a blind learning algorithm for obtaining the prior knowledge of the maximum eigenvalue of noises and the leading eigenvector of primary signals by using historical sensing data. Then, we propose a new detector for spectrum sensing by exploiting both the maximum eigenvalue and the leading eigenvector. A theoretical expression for the decision threshold of the proposed detector is derived. Numerical results are provided to validate the theoretical analysis and demonstrate the superior performance of the proposed detector
International audienceIn this paper, we consider the problem of sensing a primary user in a cognitiv...
Recent advances in random matrix theory have spurred the adoption of eigenvalue-based detection tech...
Detection based on eigenvalues of received signal covariance matrix is currently one of the most eff...
Spectrum sensing is a key task for cognitive radio. Our motivation is to increase the probability of...
NoEigenvalue based spectrum sensing schemes such as Maximum Minimum Eigenvalue (MME), Maximum Energy...
Spectrum is a scarce resource, and licensed spectrum is intended to be used only by the spectrum own...
Abstract—Spectrum sensing is a fundamental component in a cognitive radio. In this paper, we propose...
The Radio spectrum is a most precious natural resource in this era of development in wireless techno...
Cognitive Radio (CR) is an intelligent radio which can exploit the available spectrum holes by givin...
Abstract—In this paper we present a method to improve the performance of eigenvalue-based detection,...
Radio Communication technologies are undergoing drastic demand over the past two decades. The precio...
Sensing (signal detection) is a fundamental problem in cogni-tive radio. In this paper, a new method...
Abstract—Spectrum sensing, i.e., detecting the presence of pri-mary users in a licensed spectrum, is...
In opportunistic spectrum access, where unlicensed secondary users may opportunistically communicate...
Eigenvalue based spectrum sensing can make detection by catching correlation features in space and t...
International audienceIn this paper, we consider the problem of sensing a primary user in a cognitiv...
Recent advances in random matrix theory have spurred the adoption of eigenvalue-based detection tech...
Detection based on eigenvalues of received signal covariance matrix is currently one of the most eff...
Spectrum sensing is a key task for cognitive radio. Our motivation is to increase the probability of...
NoEigenvalue based spectrum sensing schemes such as Maximum Minimum Eigenvalue (MME), Maximum Energy...
Spectrum is a scarce resource, and licensed spectrum is intended to be used only by the spectrum own...
Abstract—Spectrum sensing is a fundamental component in a cognitive radio. In this paper, we propose...
The Radio spectrum is a most precious natural resource in this era of development in wireless techno...
Cognitive Radio (CR) is an intelligent radio which can exploit the available spectrum holes by givin...
Abstract—In this paper we present a method to improve the performance of eigenvalue-based detection,...
Radio Communication technologies are undergoing drastic demand over the past two decades. The precio...
Sensing (signal detection) is a fundamental problem in cogni-tive radio. In this paper, a new method...
Abstract—Spectrum sensing, i.e., detecting the presence of pri-mary users in a licensed spectrum, is...
In opportunistic spectrum access, where unlicensed secondary users may opportunistically communicate...
Eigenvalue based spectrum sensing can make detection by catching correlation features in space and t...
International audienceIn this paper, we consider the problem of sensing a primary user in a cognitiv...
Recent advances in random matrix theory have spurred the adoption of eigenvalue-based detection tech...
Detection based on eigenvalues of received signal covariance matrix is currently one of the most eff...