This paper presents spectrum sensing as a classification problem, and uses a spectrum-sensing algorithm based on a signal covariance matrix and long short-term memory network (CM-LSTM). We jointly exploited the spatial cross-correlation of multiple signals received by the antenna array and the temporal autocorrelation of single signals; we used the long short-term memory network (LSTM), which is good at extracting temporal correlation features, as the classification model; we then input the covariance matrix of the signals received by the array into the LSTM classification model to achieve the fusion learning of spatial correlation features and temporal correlation features of the signals, thus significantly improving the performance of spe...
In this thesis new methods are presented for achieving spectrum sensing in cognitive radio wireless ...
Spectrum sensing is an essential component in cognitive radios (CR). Machine learning (ML) algorithm...
With the increase in demand for spectrum resources, cognitive radio is dependent heavily to efficien...
This paper looks into the modulation classification problem for a distributed wireless spectrum sens...
Cognitive radio based network enables opportunistic dynamic spectrum access by sensing, adopting and...
This paper addresses the problem of spectrum sensing in multi-antenna cognitive radio system using s...
A framework of spectrum sensing with a multi-class hypothesis is proposed to maximize the achievable...
In this paper, the future Fifth Generation (5G New Radio) radio communication system has been consid...
One statement that we can make with absolute certainty in our current time is that wireless communic...
With the rapid development of global communication technology, the problem of scarce spectrum resour...
The identification of spectrum opportunities is a pivotal requirement for efficient spectrum utiliza...
To address the performance degradation of wide-band spectrum sensing by sub-Nyquist sampling (SNS) i...
Abstract Spectrum sensing (SS) has been heatedly discussed due to its capacity to discover the idle ...
The demand for technologies relying on the radio spectrum, such as mobile communications and IoT, ha...
International audienceThis paper presents a new blind spectrum sensing (SS) algorithm based on a mac...
In this thesis new methods are presented for achieving spectrum sensing in cognitive radio wireless ...
Spectrum sensing is an essential component in cognitive radios (CR). Machine learning (ML) algorithm...
With the increase in demand for spectrum resources, cognitive radio is dependent heavily to efficien...
This paper looks into the modulation classification problem for a distributed wireless spectrum sens...
Cognitive radio based network enables opportunistic dynamic spectrum access by sensing, adopting and...
This paper addresses the problem of spectrum sensing in multi-antenna cognitive radio system using s...
A framework of spectrum sensing with a multi-class hypothesis is proposed to maximize the achievable...
In this paper, the future Fifth Generation (5G New Radio) radio communication system has been consid...
One statement that we can make with absolute certainty in our current time is that wireless communic...
With the rapid development of global communication technology, the problem of scarce spectrum resour...
The identification of spectrum opportunities is a pivotal requirement for efficient spectrum utiliza...
To address the performance degradation of wide-band spectrum sensing by sub-Nyquist sampling (SNS) i...
Abstract Spectrum sensing (SS) has been heatedly discussed due to its capacity to discover the idle ...
The demand for technologies relying on the radio spectrum, such as mobile communications and IoT, ha...
International audienceThis paper presents a new blind spectrum sensing (SS) algorithm based on a mac...
In this thesis new methods are presented for achieving spectrum sensing in cognitive radio wireless ...
Spectrum sensing is an essential component in cognitive radios (CR). Machine learning (ML) algorithm...
With the increase in demand for spectrum resources, cognitive radio is dependent heavily to efficien...