Zhang Yin, Zhang Yongchao, Huang Yulin, Yang Jianyu
University of Electronic Science and Technology of China, Chengdu 610051.
Sensors (Basel). 2017 Jun 10;17(6):1353. doi: 10.3390/s17061353.
This paper presents a sparse superresolution approach for high cross-range resolution imaging of forward-looking scanning radar based on the Bayesian criterion. First, a novel forward-looking signal model is established as the product of the measurement matrix and the cross-range target distribution, which is more accurate than the conventional convolution model. Then, based on the Bayesian criterion, the widely-used sparse regularization is considered as the penalty term to recover the target distribution. The derivation of the cost function is described, and finally, an iterative expression for minimizing this function is presented. Alternatively, this paper discusses how to estimate the single parameter of Gaussian noise. With the advantage of a more accurate model, the proposed sparse Bayesian approach enjoys a lower model error. Meanwhile, when compared with the conventional superresolution methods, the proposed approach shows high cross-range resolution and small location error. The superresolution results for the simulated point target, scene data, and real measured data are presented to demonstrate the superior performance of the proposed approach.
本文提出了一种基于贝叶斯准则的前视扫描雷达高横向分辨率成像的稀疏超分辨率方法。首先,建立了一种新颖的前视信号模型,该模型是测量矩阵与横向目标分布的乘积,比传统的卷积模型更精确。然后,基于贝叶斯准则,将广泛使用的稀疏正则化作为惩罚项来恢复目标分布。描述了代价函数的推导过程,最后给出了使该函数最小化的迭代表达式。另外,本文还讨论了如何估计高斯噪声的单个参数。由于模型更精确,所提出的稀疏贝叶斯方法具有较低的模型误差。同时,与传统的超分辨率方法相比,该方法具有较高的横向分辨率和较小的定位误差。给出了模拟点目标、场景数据和实际测量数据的超分辨率结果,以证明所提方法的优越性能。