Higher-order cyclic cumulants (CCs) have been widely adopted for automatic modulation recognition (AMR) in cognitive radio. However, the CC-based AMR suffers greatly from the requirement of high-rate sampling. To overcome this limit, we resort to the theory of compressive sensing (CS). By exploiting the sparsity of CCs, recognition features can be extracted from a small amount of compressive measurements via a rough CS reconstruction algorithm. Accordingly, a CS-based AMR scheme is formulated. Simulation results demonstrate the availability and robustness of the proposed approach
Compressive sampling (CS), or compressive sensing, has the ability for reconstructing a sparse signa...
Cognitive radios impose challenges on the design of efficient signal detectors, including wide bandw...
Compressive sensing (CS) technologies present many advantages over other existing approaches for imp...
Cognitive Radios (CRs) are designed to operate with minimal interference to the Primary User (PU), t...
Compressive sensing theory can be applied to reconstruct the signal with far fewer measurements than...
Spectrum sensing is an important function of the cognitive radio (CR) system and is designed to dete...
In this paper, we address sparsity-based spectrum sensing for Cognitive Radio (CR) applications. Mot...
Abstract—In this paper, we address sparsity-based spectrum sensing for Cognitive Radio (CR) applicat...
Instrumentation supporting the development of cognitive radio systems is faced with challenging requ...
We consider the problem of spectrum sensing in a Cognitive Radio (CR) system when the primaries can ...
Abstract—Compressive sensing (CS) is an alternative to Shan-non/Nyquist sampling for the acquisition...
In cognitive radio networks, automatic modulation recognition (AMR) is a fundamental step to perform...
This paper focuses on the reconstruction of second order statistics of signals under a compressive s...
In the recently proposed collaborative compressive sensing, the cognitive radios (CRs) sense the occ...
We present a compressive wide-band spectrum sensing scheme for cognitive radios. The received analog...
Compressive sampling (CS), or compressive sensing, has the ability for reconstructing a sparse signa...
Cognitive radios impose challenges on the design of efficient signal detectors, including wide bandw...
Compressive sensing (CS) technologies present many advantages over other existing approaches for imp...
Cognitive Radios (CRs) are designed to operate with minimal interference to the Primary User (PU), t...
Compressive sensing theory can be applied to reconstruct the signal with far fewer measurements than...
Spectrum sensing is an important function of the cognitive radio (CR) system and is designed to dete...
In this paper, we address sparsity-based spectrum sensing for Cognitive Radio (CR) applications. Mot...
Abstract—In this paper, we address sparsity-based spectrum sensing for Cognitive Radio (CR) applicat...
Instrumentation supporting the development of cognitive radio systems is faced with challenging requ...
We consider the problem of spectrum sensing in a Cognitive Radio (CR) system when the primaries can ...
Abstract—Compressive sensing (CS) is an alternative to Shan-non/Nyquist sampling for the acquisition...
In cognitive radio networks, automatic modulation recognition (AMR) is a fundamental step to perform...
This paper focuses on the reconstruction of second order statistics of signals under a compressive s...
In the recently proposed collaborative compressive sensing, the cognitive radios (CRs) sense the occ...
We present a compressive wide-band spectrum sensing scheme for cognitive radios. The received analog...
Compressive sampling (CS), or compressive sensing, has the ability for reconstructing a sparse signa...
Cognitive radios impose challenges on the design of efficient signal detectors, including wide bandw...
Compressive sensing (CS) technologies present many advantages over other existing approaches for imp...