基于贝叶斯压缩感知的毫米波汽车雷达快速二维超分辨率成像方法

Yanqin Xu, Yuan Song, Shunjun Wei, Xiaoling Zhang, Lanwei Guo, Xiaowo Xu
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引用次数: 0

摘要

毫米波(mmW)汽车雷达成像技术广泛应用于高级驾驶辅助系统(ADAS)。现有的超分辨率成像方法可以提高有限孔径汽车雷达的角分辨率。然而,这些超分辨率方法计算复杂度高,且单快照成像性能差。解决这些问题。提出了一种用于汽车雷达实时高质量成像的快速二维超分辨率成像方法。首先,提出了一种新的贝叶斯压缩感知与Kailath-Variant (BCS-KV)成像方法,以实现单快照的高角度超分辨率。利用K-V来降低矩阵反演的复杂度。然后,在距离维度上,利用多通道累加(MCA)检测有效距离单元,进一步降低二维成像的计算复杂度;仿真和实验结果表明,该方法具有较低的计算复杂度和较好的成像性能。
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A Fast 2D Super-resolution Imaging Method via Bayesian Compressive Sensing for mmWave Automotive radar
Millimeter-wave (mmW) automotive radar imaging technology is widely applied to advanced driver assistance systems (ADAS). Existing super-resolution imaging methods can improve angular resolution for automotive radar with a limited aperture. However, these super-resolution methods have high computational complexity, meanwhile have poor imaging performance in single-snapshot. To address these problems. we propose a fast 2D super-resolution imaging method for real-time and high-quality automotive radar imaging. First, a novel Bayesian compressive sensing with the Kailath-Variant (BCS-KV) imaging method is proposed to achieve superior angular super-resolution in single-snapshot. And the K-V is used to reduce the complexity of matrix inversion. Then, in the range dimension, a Multi-Channel Accumulation (MCA) is utilized to detect the effective range unit to further reduce the 2D imaging computational complexity. Finally, both simulated and experimental results demonstrate that the proposed method has lower computational complexity and compelling imaging performance than other imaging methods.
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