Large-scale real-world radio signal recognition with deep learning

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作者
Ya TU [1 ]
Yun LIN [1 ]
Haoran ZHA [1 ]
Ju ZHANG [2 ]
Yu WANG [3 ]
Guan GUI [3 ]
Shiwen MAO [4 ]
机构
[1] College of Information and Communication Engineering, Harbin Engineering University
[2] College of Electronic Science and Engineering, National University of Defense Technology
[3] College of Telecommunications and Information Engineering, Nanjing University of Posts and Telecommunications
[4] Department of Electrical and Computer Engineering, Auburn
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In the past ten years, many high-quality datasets have been released to support the rapid development of deep learning in the fields of computer vision, voice, and natural language processing. Nowadays, deep learning has become a key research component of the Sixth-Generation wireless systems(6G) with numerous regulatory and defense applications. In order to facilitate the application of deep learning in radio signal recognition, in this work, a large-scale real-world radio signal dataset is created based on a special aeronautical monitoring system-Automatic Dependent Surveillance-Broadcast(ADS-B). This paper makes two main contributions. First, an automatic data collection and labeling system is designed to capture over-the-air ADS-B signals in the open and real-world scenario without human participation. Through data cleaning and sorting, a high-quality dataset of ADS-B signals is created for radio signal recognition. Second, we conduct an in-depth study on the performance of deep learning models using the new dataset, as well as comparison with a recognition benchmark using machine learning and deep learning methods.Finally, we conclude this paper with a discussion of open problems in this area.
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页码:35 / 48
页数:14
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