Governed by: Ministry of Industry and Information Technology of the People's Republic of China
Sponsored by: Northwestern Polytechnical University  Chinese Society Aeronautics and Astronautics
Address: Aviation Building,Youyi Campus, Northwestern Polytechnical University
Status and challenges of UAV recognition methods based on deep learning
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Civil Aviation Flight University of China

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V279

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    Abstract:

    The wide range of military, civil, and commercial applications of UAVs has prompted the need for their recognition and classification. With the development of artificial intelligence, deep learning, as a machine learning technique, has shown good performance in the field of object detection, and is also applied to the field of UAV recognition. This paper firstly introduces the background and significance of UAV recognition, reviews the development history of deep learning, and introduces two important algorithm structures in object detection: two-stage detector and single-stage detector. Secondly, it describes the common algorithms for object detection and the backbone network in the algorithms, and then summarises the improvement strategies of improved algorithms for UAV recognition in recent years, and summarises the improvement effect and its shortcomings and limitations. Finally, the outlook and challenges are discussed with respect to the current research status of UAV recognition, which is expected to make greater breakthroughs in establishing UAV datasets, improving the accuracy and real-time performance of UAV detection, and promoting the application of UAV technology in various fields.

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History
  • Received:November 22,2023
  • Revised:May 20,2024
  • Adopted:May 30,2024
  • Online: December 23,2024
  • Published:
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