Projection Metric Learning of Updated-Subspaces for Radar Target Classification
2019 16th European Radar Conference (EuRAD)(2019)
摘要
In this study, we focus on the classification problem of small radar targets. Persistent monitoring of a radar target requires an algorithm with low-computational cost and high-accuracy classification. To achieve this, we propose a radar based UAV classification framework that integrates signal detection by a subspace-updating method with projection metric learning on a Grassmann manifold. The proposed method was demonstrated through experiments using a five UAVs data set collected from continuous wave (CW) radar and exhibiting up to 4.28 points higher-accuracy and 93 times faster than the conventional method.
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关键词
radar-based UAV classification,micro-Doppler,subspace-updating method,subspace based learning,projection metric learning
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