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Clustered Multi-Task Learning for Automatic Radar Target Recognition

机译:集群式多任务学习用于雷达目标自动识别

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摘要

Model training is a key technique for radar target recognition. Traditional model training algorithms in the framework of single task leaning ignore the relationships among multiple tasks, which degrades the recognition performance. In this paper, we propose a clustered multi-task learning, which can reveal and share the multi-task relationships for radar target recognition. To further make full use of these relationships, the latent multi-task relationships in the projection space are taken into consideration. Specifically, a constraint term in the projection space is proposed, the main idea of which is that multiple tasks within a close cluster should be close to each other in the projection space. In the proposed method, the cluster structures and multi-task relationships can be autonomously learned and utilized in both of the original and projected space. In view of the nonlinear characteristics of radar targets, the proposed method is extended to a non-linear kernel version and the corresponding non-linear multi-task solving method is proposed. Comprehensive experimental studies on simulated high-resolution range profile dataset and MSTAR SAR public database verify the superiority of the proposed method to some related algorithms.
机译:模型训练是雷达目标识别的关键技术。传统的单任务学习框架模型训练算法忽略了多任务之间的关系,降低了识别性能。在本文中,我们提出了一种集群多任务学习方法,可以揭示和共享多任务关系,以进行雷达目标识别。为了进一步充分利用这些关系,考虑了投影空间中潜在的多任务关系。具体而言,提出了一个投影空间中的约束项,其主要思想是,一个紧密簇内的多个任务在投影空间中应彼此靠近。在提出的方法中,可以在原始空间和投影空间中自主学习和利用集群结构和多任务关系。针对雷达目标的非线性特性,将该方法扩展到非线性核版本,并提出了相应的非线性多任务求解方法。对模拟的高分辨率测距剖面数据集和MSTAR SAR公共数据库进行的综合实验研究证明了该方法相对于某些相关算法的优越性。

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