论文标题
基于残留的自动编码器块,可以使用展开的鲁棒PCA进行汽车雷达干预措施缓解措施
Automotive Radar Interference Mitigation with Unfolded Robust PCA based on Residual Overcomplete Auto-Encoder Blocks
论文作者
论文摘要
在自动驾驶中,雷达系统在检测诸如道路其他车辆等目标方面起着重要作用。安装在不同汽车上的雷达会互相干扰,从而降低检测性能。汽车雷达干扰缓解的深度学习方法可以成功估计目标的幅度,但无法恢复相应目标的阶段。在本文中,我们提出了一种基于未折叠的鲁棒主成分分析(RPCA)的高效技术,该技术能够在存在干扰的情况下估算幅度和相位。我们的贡献包括引入残留的超级自动编码器(ROC-AE)块中插入展开的RPCA的经常性结构中,这导致了更深的模型,该模型显着超过了展开的RPCA以及其他深度学习模型。
In autonomous driving, radar systems play an important role in detecting targets such as other vehicles on the road. Radars mounted on different cars can interfere with each other, degrading the detection performance. Deep learning methods for automotive radar interference mitigation can succesfully estimate the amplitude of targets, but fail to recover the phase of the respective targets. In this paper, we propose an efficient and effective technique based on unfolded robust Principal Component Analysis (RPCA) that is able to estimate both amplitude and phase in the presence of interference. Our contribution consists in introducing residual overcomplete auto-encoder (ROC-AE) blocks into the recurrent architecture of unfolded RPCA, which results in a deeper model that significantly outperforms unfolded RPCA as well as other deep learning models.