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WANG Zixin, XIANG Houhong, TIAN Bo, MA Hongwei, WANG Yuhao, ZENG Xiaolu, WANG Fengyu. Electromagnetic Signal Feature Matching Characterization for Constant False Alarm Detection[J]. Journal of Electronics & Information Technology. doi: 10.11999/JEIT250589
Citation: WANG Zixin, XIANG Houhong, TIAN Bo, MA Hongwei, WANG Yuhao, ZENG Xiaolu, WANG Fengyu. Electromagnetic Signal Feature Matching Characterization for Constant False Alarm Detection[J]. Journal of Electronics & Information Technology. doi: 10.11999/JEIT250589

Electromagnetic Signal Feature Matching Characterization for Constant False Alarm Detection

doi: 10.11999/JEIT250589 cstr: 32379.14.JEIT250589
Funds:  The National Natural Science Foundation of China(62201189), Key Fundamental Research Program of Anhui Province (2023z04020018), The Fundamental Research Funds for the Central Universities (JZ2024HGTB0228), National Key Laboratory of Radar Signal Processing (Aerospace 2nd Academy of Sciences) Fund, The Open Fund for the Hangzhou Institute of Technology Academician Workstation at Xidian University
  • Received Date: 2025-06-24
  • Rev Recd Date: 2025-09-08
  • Available Online: 2025-09-12
  •   Objective  Small targets such as unmanned aerial vehicles and unmanned vessels, which exhibit small Radar Cross Section (RCS) values and weak echoes, are difficult to detect due to their low observability. Traditional Constant False Alarm Rate (CFAR) detection is typically represented by the Cell-Averaged (CA) CFAR method, in which the detection threshold is determined by the statistical power parameter of the signal. However, its detection performance is constrained by the Signal-to-Noise Ratio (SNR). This study focuses on how to exploit and apply signal features beyond power parameters to achieve CFAR detection under lower SNR conditions.  Methods  After pulse compression, the envelope of a Linear Frequency Modulation (LFM) signal exhibits sinc characteristics, whereas noise retains its random nature. This difference can be used to distinguish target echoes from non-target signals. On this basis, we propose a constant false alarm detection method based on signal feature matching. First, both the ideal echo signal and the actual echo signal are processed with sliding windows of equal length to generate an ideal sample and a set of test samples. A dual-port fully connected neural network is then constructed to extract the deep feature matching degree between the ideal sample and the test samples. Finally, the constant false alarm threshold is obtained by numerically calculating the deep feature matching parameter from a large number of non-target samples compared with the standard sample.  Results and Discussions  Several sets of simulation experiments are carried out, and measured radar data from different frequency bands are applied to verify the effectiveness of the proposed method. The simulations first confirm that the method maintains stable constant false alarm characteristics (Table 1). The detection performance is then compared with traditional CA-CFAR detection, machine learning approaches, and other deep learning methods. The results indicate that, relative to CA-CFAR detection, the proposed method achieve 2–5 dB gain in equivalent SNR across different false alarm probabilities (Fig. 4). Under mismatched SNR conditions, the method continues to demonstrate robust detection performance with strong generalization capability (Fig. 5). In the processing of measured X-band radar data, the proposed method detects targets that CA-CFAR fails to identify, extending the detection range to 740 distance units, compared with 562 distance units for CA-CFAR, corresponding to an improvement of approximately 28.72% in radar detection capability (Fig. 7, 8). In the case of S-band radar data, the proposed method significantly reduces false alarms (Fig. 10, 11).  Conclusions  This study exploits the difference between target and noise signal envelopes by introducing a feature extraction network that effectively enhances target detection performance. Comparative simulation experiments and the processing of measured radar data across different frequency bands demonstrate the following: (1) the proposed method markedly improves detection performance over traditional CA-CFAR detection, yielding a 2–5 dB gain in equivalent SNR; (2) under mismatched SNR conditions, the method shows strong generalization capability, achieving better detection performance than other deep learning and machine learning approaches; (3) in X-band radar data processing, the method increases detection capability by approximately 28.72%; and (4) in S-band radar data processing, it significantly reduces false alarms. Future work will focus on accelerating the detection process to further improve efficiency.
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