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Bayesian Spatiotemporal Multitask Learning for Radar HRRP Target Recognition

机译:贝叶斯时空多任务学习用于雷达HRRP目标识别

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摘要

A Bayesian dynamic model based on multitask learning (MTL) is developed for radar automatic target recognition (RATR) using high-resolution range profile (HRRP). The aspect-dependent HRRP sequence is modeled using a truncated stick-breaking hidden Markov model (TSB-HMM) with time-evolving transition probabilities, in which the spatial structure across range cells is described by the hidden Markov structure and the temporal dependence between HRRP samples is described by the time evolution of the transition probabilities. This framework imposes the belief that temporally proximate HRRPs are more likely to be drawn from similar HMMs, while also allowing for possible distant repetition or “innovation”. In addition, as formulated the stick-breaking prior and MTL mechanism are employed to infer the number of hidden states in an HMM and learn the target-dependent states collectively for all targets. The form of the proposed hierarchical model allows efficient variational Bayesian (VB) inference, of interest for large-scale problems. To validate the formulation, example results are presented for an illustrative synthesized dataset and our main application—RATR, for which we consider the measured HRRP data. For the latter, we also make comparisons to the model with the independent state-transition statistics and some other existing statistical models for radar HRRP data.
机译:基于高分辨率范围轮廓(HRRP),开发了基于多任务学习(MTL)的贝叶斯动态模型用于雷达自动目标识别(RATR)。依赖于方面的HRRP序列使用具有时间演化过渡概率的截断的棍断裂隐马尔可夫模型(TSB-HMM)进行建模,其中跨区域单元的空间结构由隐马尔可夫结构和HRRP之间的时间依赖性来描述样本由转移概率的时间演化来描述。该框架使人们相信,时间上接近的HRRP更可能来自相似的HMM,同时还允许可能的遥远重复或“创新”。另外,按照公式,先采用先破后断和MTL机制来推断HMM中隐藏状态的数量,并为所有目标共同学习目标相关状态。所提出的层次模型的形式允许有效的变分贝叶斯(VB)推理,这是大规模问题的关注点。为了验证配方,我们给出了示例性合成数据集和我们的主要应用程序RATR的示例结果,为此我们考虑了测得的HRRP数据。对于后者,我们还将与具有独立状态转换统计数据的模型以及其他一些现有的雷达HRRP数据统计模型进行比较。

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