Capturing Temporal-dependence in Radar Echo for Spatial-temporal Sparse Target Detection

被引:0
|
作者
Zhang L. [1 ,2 ]
Pan J. [1 ,2 ]
Zhang Y. [1 ,2 ]
Chen Y. [1 ,2 ]
Ma Z. [1 ,2 ]
Huang X. [1 ,2 ]
Sun K. [1 ,2 ]
机构
[1] Intelligent Science and Technology Academy of CASIC, Beijing
[2] Key Laboratory of Aerospace Defense Intelligent Systems and Technology, Beijing
基金
中国国家自然科学基金;
关键词
Data balancing policy; Echo representation learning; Radar target detection; Recurrent Neural Network (RNN); Temporal-dependence;
D O I
10.12000/JR22228
中图分类号
学科分类号
摘要
Existing data-driven object detection methods use the Constant False Alarm Rate (CFAR) principle to achieve more robust detection performance using supervised learning. This study systematically proposes a data-driven target detection framework based on the measured echo data from the ground early warning radar for low-altitude slow dim target detection. This framework addresses two key problems in this field: (1) aiming at the problem that current data-driven object detection methods fail to make full use of feature representation learning to exert its advantages, a representation learning method of echo temporal dependency is proposed, and two implementations, including unsupervised- and supervised-learning are given; (2) Low-altitude slow dim targets show extreme sparsity in the radar detection range, such unevenness of target-clutter sample scale causes the trained model to seriously tilt to the clutter samples, resulting in the decision deviation. Therefore, we further propose incorporating the data balancing policy of abnormal detection into the framework. Finally, ablation experiments are performed on the measured X-band echo data for each component in the proposed framework. Experimental results completely validate the effectiveness of our echo temporal representation learning and balancing policy. Additionally, under real sequential validation, our proposed method achieves comprehensive detection performance that is superior to multiple CFAR methods. © 2023 Institute of Electronics Chinese Academy of Sciences. All rights reserved.
引用
收藏
页码:356 / 375
页数:19
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