Spectrum monitoring is one of the significant tasks required during the spectrum sharing process in cognitive radio networks (CRNs). Although spectrum monitoring is widely used to monitor the usage of allocated spectrum resources, this work focuses on detecting a primary user (PU) in the presence of secondary user (SU) signals. For signal classification, existing methods, including cooperative, noncooperative, and neural network-based models, are frequently used, but they are still inconsistent because they lack sensitivity and accuracy. A deep neural network model for intelligent wireless signal identification to perform spectrum monitoring is proposed to perform efficient sensing at low SNR (signal to noise ratio) and preserve hyperspectr...
Vacant frequency bands are used in cognitive radio (CR) by incorporating the spectrum sensing (SS) t...
Deep learning (DL) has been introduced to cognitive radio network to solve the problem of spectrum s...
This paper presents end-to-end learning from spectrum data an umbrella term for new sophisticated wi...
In a cognitive radio environment, spectrum sensing is an essential phase for improving spectrum reso...
With the increase in demand for spectrum resources, cognitive radio is dependent heavily to efficien...
International audienceSpectrum sensing (SS) is an essential task of the secondary user (SU) in a cog...
Cognitive radio, as a key technology to improve the utilization of radio spectrum, acquired much att...
In a cognitive radio network (CRN), spectrum sensing is an important prerequisite for improving the ...
AbstractWireless communication applications are increasing day-by-day. As a consequence efficient sp...
Recognition of signals is a spectrum sensing challenge requiring simultaneous detection, temporal an...
Accurate identification of the signal type in shared-spectrum networks is critical for efficient res...
Cooperative network is a promising concept for achieving a high-accuracy decision of spectrum sensin...
The need for Artificial Intelligence algorithms for future Cognitive Radio (CR) systems is unavoidab...
In this paper, we propose a robust non-cooperative spectrum sensing algorithm based on deep learning...
It is imperative to address the problem of spectrum under usage and inefficiency becaus...
Vacant frequency bands are used in cognitive radio (CR) by incorporating the spectrum sensing (SS) t...
Deep learning (DL) has been introduced to cognitive radio network to solve the problem of spectrum s...
This paper presents end-to-end learning from spectrum data an umbrella term for new sophisticated wi...
In a cognitive radio environment, spectrum sensing is an essential phase for improving spectrum reso...
With the increase in demand for spectrum resources, cognitive radio is dependent heavily to efficien...
International audienceSpectrum sensing (SS) is an essential task of the secondary user (SU) in a cog...
Cognitive radio, as a key technology to improve the utilization of radio spectrum, acquired much att...
In a cognitive radio network (CRN), spectrum sensing is an important prerequisite for improving the ...
AbstractWireless communication applications are increasing day-by-day. As a consequence efficient sp...
Recognition of signals is a spectrum sensing challenge requiring simultaneous detection, temporal an...
Accurate identification of the signal type in shared-spectrum networks is critical for efficient res...
Cooperative network is a promising concept for achieving a high-accuracy decision of spectrum sensin...
The need for Artificial Intelligence algorithms for future Cognitive Radio (CR) systems is unavoidab...
In this paper, we propose a robust non-cooperative spectrum sensing algorithm based on deep learning...
It is imperative to address the problem of spectrum under usage and inefficiency becaus...
Vacant frequency bands are used in cognitive radio (CR) by incorporating the spectrum sensing (SS) t...
Deep learning (DL) has been introduced to cognitive radio network to solve the problem of spectrum s...
This paper presents end-to-end learning from spectrum data an umbrella term for new sophisticated wi...