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Radar HRRP Target Recognition Based on Dynamic Learning with Limited Training Data

机译:基于动态学习的雷达HRRP目标识别有限训练数据

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摘要

For high-resolution range profile (HRRP)-based radar automatic target recognition (RATR), adequate training data are required to characterize a target signature effectively and get good recognition performance. However, collecting enough training data involving HRRP samples from each target orientation is hard. To tackle the HRRP-based RATR task with limited training data, a novel dynamic learning strategy is proposed based on the single-hidden layer feedforward network (SLFN) with an assistant classifier. In the offline training phase, the training data are used for pretraining the SLFN using a reduced kernel extreme learning machine (RKELM). In the online classification phase, the collected test data are first labeled by fusing the recognition results of the current SLFN and assistant classifier. Then the test samples with reliable pseudolabels are used as additional training data to update the parameters of SLFN with the online sequential RKELM (OS-RKELM). Moreover, to improve the accuracy of label estimation for test data, a novel semi-supervised learning method named constraint propagation-based label propagation (CPLP) was developed as an assistant classifier. The proposed method dynamically accumulates knowledge from training and test data through online learning, thereby reinforcing performance of the RATR system with limited training data. Experiments conducted on the simulated HRRP data from 10 civilian vehicles and real HRRP data from three military vehicles demonstrated the effectiveness of the proposed method when the training data are limited.
机译:对于高分辨率距离像(HRRP)为基础的雷达自动目标识别(RATR),需要足够的训练数据有效地表征目标特征,取得了很好的识别性能。然而,收集来自各目标方向涉及距离像足够的训练数据是很难的。要解决有限的训练数据基于HRRP-RATR任务,一个新的动态学习策略是基于单隐层前馈网络(SLFN)与助手分类的建议。在离线训练阶段,训练数据被用于使用降低的内核极端学习机(RKELM)预训练的SLFN。在网上分类阶段,所收集的测试数据首先被熔断电流SLFN和助手分类的识别结果标记。然后用可靠pseudolabels测试样品被用作附加的训练数据与在线顺序RKELM(OS-RKELM)来更新SLFN的参数。此外,为了改善标签估计的测试数据,一种新颖的半监督学习方法命名约束基于传播标签传播(CPLP)被开发作为辅助分类器的精确度。该方法通过在线学习动态累计从训练和测试数据的知识,从而增强有限的训练数据RATR系统的性能。从三辆军车10辆民用和实际距离像数据模拟距离像数据所进行的实验证明了该方法的有效性当训练数据有限。

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