Jump to content

Interference Mitigation for Automotive Radar in Continious Wavelet Transform Domain

Fast facts

  • Internal authorship

  • Further publishers

    Zheng Zhang, Shengheng Liu, Lian Kou, Danfeng Shan, Yongming Huang

  • Publishment

    • 2023
    • Volume Proceedings IET International Radar Conference 2023
  • Organizational unit

  • Subjects

    • Communication and information technology
  • Publication format

    Conference paper

Quote

Z. Zhang, S. Liu, L. Kou, D. Shan, T. Fei, and Y. Huang, "Interference Mitigation for Automotive Radar in Continious Wavelet Transform Domain," in Proceedings IET International Radar Conference 2023, 2023, p. n.n.-n.n. [Online]. Available: https://www.researchgate.net/publication/377115890_Interference_Mitigation_for_Automotive_Radar_in_Continious_Wavelet_Transform_Domain

Content

nterference mitigation is a crucial aspect of automotive radar research, especially in dense vehicle scenarios, where radardetection performance needs enhancement. This paper proposes a novel interference mitigation algorithm, the continuouswavelet transform and morphological component analysis (CWT-MCA). By converting the time-domain signal to thetime-frequency domain, CWT-MCA achieves direct separation of target and interference components without requiringinterference detection and identification. The paper compares the proposed algorithm with the traditional linear predictionmethod. Numerical simulations show that our algorithm excels in interference mitigation performance and computationalefficiency, making it well-suited for real-time implementation in automotive radar systems.

About the publication

Notes and references

This site uses cookies to ensure the functionality of the website and to collect statistical data. You can object to the statistical collection via the data protection settings (opt-out).

Settings(Opens in a new tab)