

系统工程与电子技术 ›› 2026, Vol. 48 ›› Issue (7): 2206-2217.doi: 10.12305/j.issn.1001-506X.2026.07.09
• 传感器与信号处理 • 上一篇
收稿日期:2025-05-22
修回日期:2025-08-09
接受日期:2025-08-17
出版日期:2025-11-28
发布日期:2025-11-28
通讯作者:
侯斐斐
E-mail:dongjian@csu.edu.cn;houfeifei@csu.edu.cn
基金资助:
Jian DONG1(
), Junjie ZOU1, Feifei HOU2(
), Chengwang XIAO1
Received:2025-05-22
Revised:2025-08-09
Accepted:2025-08-17
Online:2025-11-28
Published:2025-11-28
Contact:
Feifei HOU
E-mail:dongjian@csu.edu.cn;houfeifei@csu.edu.cn
摘要:
在现代实际战场环境中,雷达目标识别面临着双重挑战:一是先进目标的数据集获取难度较大,二是对决策的可解释性要求较高。为此,结合统计模式识别的高精度优势与模糊模式识别的抗噪特性,提出一种基于高分辨距离像特征统计特性的模糊概率模式识别方法。在统计特性方面,对χ2分布进行广义p-范拓展,深入研究并分析了χ p分布的统计特性,实现了更高的识别精度。在模糊属性方面,采用隶属度函数使所提方法在低信噪比条件下仍能保持良好的识别性能。通过电磁仿真软件对国外先进战机进行数据生成,实验结果表明,所提方法在识别精度与噪声鲁棒性上均优于多种现有模式识别技术。
中图分类号:
董健, 邹俊杰, 侯斐斐, 肖程望. 基于HRRP特征统计特性的雷达目标识别方法[J]. 系统工程与电子技术, 2026, 48(7): 2206-2217.
Jian DONG, Junjie ZOU, Feifei HOU, Chengwang XIAO. Radar target recognition method based on statistical properties of HRRP features[J]. Systems Engineering and Electronics, 2026, 48(7): 2206-2217.
表1
实验目标类型及其结构参数"
| 类别 | 机型 | 飞机长度 | 翼展宽度 | 机身高度 | |||
| 国外先进战斗机 | 美国F-22“猛禽”战斗机 | 18.90 | 13.56 | 5.08 | |||
| 国外先进战斗机 | 美国F-35“闪电II”战斗机 | 15.67 | 10.70 | 4.33 | |||
| 国外先进轰炸机 | 美国B-2“幽灵”轰炸机 | 21.00 | 52.40 | 5.18 | |||
| 国外先进轰炸机 | 美国B-21“突袭者”轰炸机 | 18.30 | 46.00 | 5.00 | |||
| 国外先进无人机 | 美国RQ-4“全球鹰”无人机 | 13.50 | 35.40 | 4.60 | |||
| 国外先进无人机 | 美国MQ-9“死神”无人机 | 10.97 | 20.10 | 3.81 | |||
| 库外目标(战斗机) | 俄罗斯Su-57战斗机 | 19.80 | 13.98 | 4.70 | |||
| 库外目标(轰炸机) | 俄罗斯Tu-160轰炸机 | 54.10 | 55.70 | 13.10 | |||
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