The ability to answer all important questions about the radio-frequency (RF) scene is essential for cognitive radios (CRs) to be effective. In this paper, we propose a RF -based automatic traffic recognizer that, observing the radio spectrum emitted by a communication link and exploiting machine learning (ML) techniques, is able to distinguish between two types of data streams. Numerical results based on real waveforms collected by a RF sensor, demonstrate that over-the-air user traffic classification is possible with an accuracy of 97% at high signal-to-noise ratios (SNRs). Moreover, we show that using a neural network (NN) very good classification performance can be achieved also at low SNRs (around 2 dB). Finally, the impact of the obser...
In this work, we propose a new framework for blind wireless network topology inference and present a...
Intelligent signal processing for wireless communications is a vital task in modern wireless systems...
In a cognitive radio environment, spectrum sensing is an essential phase for improving spectrum reso...
The ability to answer all important questions about the radio-frequency (RF) scene is essential for ...
Traffic Classification (TC) systems allow inferring the application that is generating the traffic b...
Wireless technology and connectivity are spreading rapidly around the globe. The advancement of mach...
Network traffic classification is the process of analyzing traffic flows and associating them to dif...
The need for Artificial Intelligence algorithms for future Cognitive Radio (CR) systems is unavoidab...
We propose the data mining-informed cognitive radio, which uses non-traditional data sources and dat...
Signal detection, identification, and characterization are among the major challenges in aerial comm...
The unlicensed spectrum has been utilized to make up the shortage on frequency spectrum in new radio...
In the last decade, various machine learning schemes have been investigated to make the cognitive ra...
The demand for technologies relying on the radio spectrum, such as mobile communications and IoT, ha...
Radio frequency (RF) wireless systems generate large amounts of data every day on the signal content...
The paper presents an analytical study on a wireless traffic dataset carried out under the different...
In this work, we propose a new framework for blind wireless network topology inference and present a...
Intelligent signal processing for wireless communications is a vital task in modern wireless systems...
In a cognitive radio environment, spectrum sensing is an essential phase for improving spectrum reso...
The ability to answer all important questions about the radio-frequency (RF) scene is essential for ...
Traffic Classification (TC) systems allow inferring the application that is generating the traffic b...
Wireless technology and connectivity are spreading rapidly around the globe. The advancement of mach...
Network traffic classification is the process of analyzing traffic flows and associating them to dif...
The need for Artificial Intelligence algorithms for future Cognitive Radio (CR) systems is unavoidab...
We propose the data mining-informed cognitive radio, which uses non-traditional data sources and dat...
Signal detection, identification, and characterization are among the major challenges in aerial comm...
The unlicensed spectrum has been utilized to make up the shortage on frequency spectrum in new radio...
In the last decade, various machine learning schemes have been investigated to make the cognitive ra...
The demand for technologies relying on the radio spectrum, such as mobile communications and IoT, ha...
Radio frequency (RF) wireless systems generate large amounts of data every day on the signal content...
The paper presents an analytical study on a wireless traffic dataset carried out under the different...
In this work, we propose a new framework for blind wireless network topology inference and present a...
Intelligent signal processing for wireless communications is a vital task in modern wireless systems...
In a cognitive radio environment, spectrum sensing is an essential phase for improving spectrum reso...