Essential Site Maintenance: Authorea-powered sites will be updated circa 15:00-17:00 Eastern on Tuesday 5 November.
There should be no interruption to normal services, but please contact us at help@authorea.com in case you face any issues.

loading page

HRRPGraphNet: Make HRRPs to Be Graphs for Efficient Target Recognition
  • +5
  • Lingfeng Chen,
  • Xiao Sun,
  • Zhiliang Pan,
  • Qi Liu,
  • Zehao Wang,
  • Xiaolong Su,
  • Zhen Liu,
  • Panhe Hu
Lingfeng Chen
National University of Defense Technology
Author Profile
Xiao Sun
National University of Defense Technology
Author Profile
Zhiliang Pan
National University of Defense Technology
Author Profile
Qi Liu
National University of Defense Technology
Author Profile
Zehao Wang
National University of Defense Technology
Author Profile
Xiaolong Su
National University of Defense Technology
Author Profile
Zhen Liu
National University of Defense Technology
Author Profile
Panhe Hu
National University of Defense Technology

Corresponding Author:hupanhe13@nudt.edu.cn

Author Profile

Abstract

High Resolution Range Profiles (HRRP) have become a key area of focus in the domain of Radar Automatic Target Recognition (RATR). Despite the success of deep learning based HRRP recognition, these methods needs a large amount of training samples to generate good performance, which could be a severe challenge under non-cooperative circumstances. Currently, deep learning based models treat HRRP as sequences, which may lead to ignorance of the internal relationship of range cells. This letter introduces HRRPGraphNet, whose pivotal innovation is the transformation of HRRP data into a novel graph structure, utilizing a range cell amplitude-based node vector and a range-relative adjacency matrix. This graph-based approach facilitates both local feature extraction via one-dimensional convolution layers, global feature extraction through a graph convolution layer and a attention module. Experiments on the aircraft electromagnetic simulation dataset confirmed HRRPGraphNet’s superior accuracy and robustness, particularly in limited training sample environments, underscoring the potential of graph-driven innovations in HRRP-based RATR. Codes are available at: https://github.com/MountainChenCad/HRRPGraphNet.
08 Sep 2024Submitted to Electronics Letters
11 Sep 2024Submission Checks Completed
11 Sep 2024Assigned to Editor
11 Sep 2024Review(s) Completed, Editorial Evaluation Pending
22 Sep 2024Reviewer(s) Assigned
30 Sep 2024Editorial Decision: Revise Minor
04 Oct 20241st Revision Received
07 Oct 2024Submission Checks Completed
07 Oct 2024Assigned to Editor
07 Oct 2024Review(s) Completed, Editorial Evaluation Pending
07 Oct 2024Reviewer(s) Assigned
01 Nov 2024Editorial Decision: Accept