Wideband signal detection is an important problem in wireless communication. With the rapid development of deep learning (DL) technology, some DL-based methods are applied to wireless communication and have shown great potential. In this paper, we present a novel neural network for detecting signals and classifying signal types in wideband spectrograms. Our network utilizes the key point estimation to locate the rough centerline of the signal region and recognize its class. Then, several regressions are carried out to obtain properties, including the local offset and the border offsets of a bounding box, which are further synthesized for a more fine location. Experimental results demonstrate that our method performs more accurate than other...
This dataset comprises a collection of synthetically generated wideband signals, which were used in ...
The need for Artificial Intelligence algorithms for future Cognitive Radio (CR) systems is unavoidab...
This paper implements a deep learning-based modulation pattern recognition algorithm for communicati...
Accurate identification of the signal type in shared-spectrum networks is critical for efficient res...
This paper presents end-to-end learning from spectrum data an umbrella term for new sophisticated wi...
Multi-signal detection is of great significance in civil and military fields, such as cognitive radi...
Spectrum monitoring is one of the significant tasks required during the spectrum sharing process in ...
Recognition of signals is a spectrum sensing challenge requiring simultaneous detection, temporal an...
This paper presents end-to-end learning from spectrum data-an umbrella term for new sophisticated wi...
This paper presents an end-to-end deep convolutional neural network (CNN) model for carrier signal d...
Automated spectrum analysis serves as a troubleshooting tool that helps to diagnose faults in wirele...
Wireless signal recognition plays an important role in cognitive radio, which promises a broad prosp...
In a cognitive radio environment, spectrum sensing is an essential phase for improving spectrum reso...
In the last decade, various machine learning schemes have been investigated to make the cognitive ra...
Deep learning has recently been used for this issue with superior results in automatic modulation cl...
This dataset comprises a collection of synthetically generated wideband signals, which were used in ...
The need for Artificial Intelligence algorithms for future Cognitive Radio (CR) systems is unavoidab...
This paper implements a deep learning-based modulation pattern recognition algorithm for communicati...
Accurate identification of the signal type in shared-spectrum networks is critical for efficient res...
This paper presents end-to-end learning from spectrum data an umbrella term for new sophisticated wi...
Multi-signal detection is of great significance in civil and military fields, such as cognitive radi...
Spectrum monitoring is one of the significant tasks required during the spectrum sharing process in ...
Recognition of signals is a spectrum sensing challenge requiring simultaneous detection, temporal an...
This paper presents end-to-end learning from spectrum data-an umbrella term for new sophisticated wi...
This paper presents an end-to-end deep convolutional neural network (CNN) model for carrier signal d...
Automated spectrum analysis serves as a troubleshooting tool that helps to diagnose faults in wirele...
Wireless signal recognition plays an important role in cognitive radio, which promises a broad prosp...
In a cognitive radio environment, spectrum sensing is an essential phase for improving spectrum reso...
In the last decade, various machine learning schemes have been investigated to make the cognitive ra...
Deep learning has recently been used for this issue with superior results in automatic modulation cl...
This dataset comprises a collection of synthetically generated wideband signals, which were used in ...
The need for Artificial Intelligence algorithms for future Cognitive Radio (CR) systems is unavoidab...
This paper implements a deep learning-based modulation pattern recognition algorithm for communicati...