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Multitask factor analysis with application to noise robust radar HRRP target recognition

机译:多任务因子分析及其在噪声鲁棒雷达HRRP目标识别中的应用

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摘要

A factor analysis model based on multitask learning (MTL) is developed to characterize the FFT-magnitude feature of complex high-resolution range profile (HRRP), motivated by the problem of radar automatic target recognition (RATR). The MTL mechanism makes it possible to appropriately share the information among samples from different target-aspects and learn the aspect-dependent parameters collectively, thus offering the potential to improve the overall recognition performance with small training data size. In addition, since the noise level of a test sample is usually different from those of the training samples in the real application, another contribution is that the proposed framework can update the noise level parameter in the FA model to adaptively match that of the received test sample. Efficient inference is performed via variational Bayes (VB) for the proposed hierarchical Bayesian model, and encouraging results are reported on the measured HRRP dataset with small training data size and under the test condition of low signal-to-noise ratio (SNR).
机译:基于雷达自动目标识别(RATR)问题,开发了基于多任务学习(MTL)的因子分析模型来表征复杂高分辨率范围轮廓(HRRP)的FFT幅度特征。 MTL机制使得可以在来自不同目标方面的样本之间适当地共享信息,并集体学习与方面有关的参数,从而提供了以较小的训练数据量来提高整体识别性能的潜力。另外,由于测试样本的噪声水平通常与实际应用中的训练样本的噪声水平不同,所以另一个贡献在于,提出的框架可以更新FA模型中的噪声水平参数,以自适应地匹配接收到的测试的噪声水平参数。样品。对于所提出的分层贝叶斯模型,通过变分贝叶斯(VB)进行了有效的推断,并且在测量数据量小的训练数据量和低信噪比(SNR)的测试条件下,对测得的HRRP数据集报告了令人鼓舞的结果。

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