基于微多普勒特征分解的多目标分类

S. Vishwakarma, S. S. Ram
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引用次数: 5

摘要

动态室内目标(如人类和风扇)的微多普勒特征是一种有用的分类工具。然而,目前所有的分类方法都受到通道中只有一个目标的假设的限制。在这项工作中,我们提出了一种基于单通道源分离技术对通道中同时存在的多个目标进行分类的方法。我们应用基于稀疏编码的字典学习(DL)算法将来自多个目标的微多普勒回波分解为其组成信号。随后对分解后的信号进行分类。我们已经在模拟人体和风扇数据上测试了所提出算法的性能。
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Classification of multiple targets based on disaggregation of Micro-Doppler signatures
Micro-Doppler signatures of dynamic indoor targets (such as humans and fans) serve as a useful tool for classification. However, all the current classification methods are limited by the assumption that only a single target is present in the channel. In this work, we propose a method to classify multiple targets that are simultaneously present in the channel on the basis of a single channel source separation technique. We apply sparse coding based dictionary learning (DL) algorithms for disaggregating micro-Doppler returns from multiple targets into its constituent signals. The classification is subsequently carried out on the disaggregated signals. We have tested the performance of the proposed algorithm on simulated human and fan data.
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