Remote Sensing (Aug 2024)

Angle Estimation Using Learning-Based Doppler Deconvolution in Beamspace with Forward-Looking Radar

  • Wenjie Li,
  • Xinhao Xu,
  • Yihao Xu,
  • Yuchen Luan,
  • Haibo Tang,
  • Longyong Chen,
  • Fubo Zhang,
  • Jie Liu,
  • Junming Yu

DOI
https://doi.org/10.3390/rs16152840
Journal volume & issue
Vol. 16, no. 15
p. 2840

Abstract

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The measurement of the target azimuth angle using forward-looking radar (FLR) is widely applied in unmanned systems, such as obstacle avoidance and tracking applications. This paper proposes a semi-supervised support vector regression (SVR) method to solve the problem of small sample learning of the target angle with FLR. This method utilizes function approximation to solve the problem of estimating the target angle. First, SVR is used to construct the function mapping relationship between the echo and the target angle in beamspace. Next, by adding manifold constraints to the loss function, supervised learning is extended to semi-supervised learning, aiming to improve the small sample adaptation ability. This framework supports updating the angle estimating function with continuously increasing unlabeled samples during the FLR scanning process. The numerical simulation results show that the new technology has better performance than model-based methods and fully supervised methods, especially under limited conditions such as signal-to-noise ratio and number of training samples.

Keywords