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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Adaptive Waveform Optimization for MIMO Radar Imaging Based on Sparse Recovery
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Adaptive Waveform Optimization for MIMO Radar Imaging Based on Sparse Recovery

机译:基于稀疏恢复的MIMO雷达成像自适应波形优化

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摘要

Multiple-input multiple-output (MIMO) radar imaging is a new technique to obtain the radar image of aerospace targets. Orthogonal waveform design is one of the important issues for MIMO radar imaging. However, the fully orthogonal waveforms in the same frequency and with the arbitrary time delay do not exist in practice. Thus, the imaging result using nonorthogonal waveforms based on matched filtering (MF) method is usually unsatisfactory if further processing like digital beam forming (DBF) is not used. Sparse recovery (SR) method is possible to restrain the mutual interference of nonorthogonal waveforms by exploiting the sparsity of targets and improve the imaging quality. In this article, waveform design issue in SR-based MIMO imaging method is studied. The difference in the designs of waveforms in MF method and SR method is discussed. Based on requirements analysis, a comprehensive optimization model is built for waveform design and the existing cycle algorithm (CA) is modified to solve the model. Considering the fact that the target scene is always changing, waveforms should be adjusted along with the dynamic scene. Therefore, an adaptive waveform optimization method is further proposed based on the cognition of target scene. The dimension of SR model is reduced and the waveforms are optimized according to the cognitive target length. Moreover, based on the reconstructed target range profiles, transmitting waveforms together with recovery algorithm are further optimized to match the target better. Simulation results show that the waveforms after optimization are better than the nonoptimized waveforms and the proposed adaptive optimization method is valid and robust for the dynamic target scene.
机译:多输入多输出(MIMO)雷达成像是获得航空航天目标雷达图像的新技术。正交波形设计是MIMO雷达成像的重要问题之一。然而,在实践中不存在相同频率和任意时间延迟的完全正交波形。因此,如果不使用像数字波束形成(DBF)的进一步处理,则使用基于匹配的滤波(MF)方法的非正交波形的成像结果通常是不令人满意的。稀疏恢复(SR)方法可以通过利用目标的稀疏性来抑制非正交波形的相互干扰,并提高成像质量。在本文中,研究了基于SR的MIMO成像方法中的波形设计问题。讨论了MF方法和SR方法中波形设计的差异。基于要求分析,建立了一个全面的优化模型,用于波形设计,修改了现有的循环算法(CA)以解决模型。考虑到目标场景始终改变的事实,应与动态场景一起调整波形。因此,基于目标场景的认知,进一步提出了一种自适应波形优化方法。减少了SR模型的尺寸,并且根据认知目标长度优化波形。此外,基于重建的目标范围简档,进一步优化了与恢复算法一起发送波形以更好地匹配目标。仿真结果表明,优化后的波形优于非优化波形,所提出的自适应优化方法对动态目标场景有效和鲁棒。

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