基于稀疏性的ISAR成像图像重建技术

R. Raj, R. Lipps, A. Bottoms
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引用次数: 3

摘要

我们提出了一种基于稀疏性的图像重建方法的ISAR成像新技术。后者提供了基于傅里叶重建技术的明显优势,它提供了使用不同基函数来表示被成像的底层场景结构的灵活性。我们详细推导了我们的ISAR算法,并给出了在真实ISAR数据上的实验结果,显示了它比传统的基于傅里叶的图像重建的优越性。我们还演示了我们的ISAR成像问题的公式如何克服文献中先前基于CS(压缩感知)的ISAR成像方法的一些局限性。
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Sparsity-based image reconstruction techniques for ISAR imaging
We present novel techniques for ISAR imaging via a Sparsity-based image reconstruction methodology. The latter offer a distinct advantage of Fourier based reconstruction techniques by offering the flexibility of using different basis functions to represent the underlying scene structure being imaged. We derive our ISAR algorithm in detail and present experimental results on real ISAR data showing its superiority over traditional Fourier based image reconstruction. We also demonstrate how our formulation of the ISAR imaging problem overcomes some of limitations associated previous approaches to CS (Compressive Sensing) based ISAR imaging in the literature.
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