基于元知识传递的少射雷达目标识别

Yuan Yan, Jingming Sun, Junpeng Yu, Yuhao Yang, Lin Jin
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引用次数: 2

摘要

针对作战场景中出现的新型少弹敌方目标,提出了一种基于元知识传递的少弹雷达目标识别技术。这项技术模拟了人类的学习过程。首先,建立了多任务识别的学习机制。其次,通过学习不同任务的识别过程,获得快速适应、强化泛化等能力,逐步积累元知识。最后,将元知识传递给模型,以支持模型在新的少镜头识别场景中实现快速准确的学习。该算法能够在较少的射击场景(5个样本以下)下实现对新型雷达目标的快速准确识别。在HRRP数据集和MSTAR公共数据集的全角度实测数据集上均取得了较好的效果。在MSTAR数据集中只学习5个新类型目标样本的情况下,识别率达到97.4%。基于HRRP数据集的最佳识别率为79.1%。在每种新目标只学习一个样本的情况下,三种分类的平均识别准确率可达64.1%。同时,该算法在一定程度上克服了雷达数据的角度敏感性,在实际场景中非常实用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Few-Shot Radar Target Recognition based on Transferring Meta Knowledge
Aiming at new types of few shot enemy targets in the combat scenario, a few shot radar target recognition technology based on transferring meta knowledge is proposed. This technology simulates the human learning process. First, a learning mechanism for multiple recognition tasks is built. Secondly, By learning recognition process of different tasks, the ability such as quickly adaption, strengthen generalization is gained, meta knowledge is accumulated gradually. Finally, the meta knowledge is transferred to support the model to achieve fast and accurate learning in the new few-shot recognition scenario. The proposed algorithm can realize the fast and accurate recognition of new types of radar targets in few shot scenarios (5 samples or less). Good results have been achieved in the full-angle field measured data set of a HRRP dataset and the public MSTAR dataset. It has a recognition rate of 97.4% when only 5 samples of new types of targets are learned in the MSTAR dataset. The optimal recognition rate based on HRRP dataset is 79.1%. Under the condition that only one sample is learned for each new type of target, the average recognition accuracy of three classifications can reach 64.1%. At the same time, the algorithm can overcome the angle sensitivity of radar data to a certain extent, which is very utility in practical scenarios.
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