Improving SAR Imaging by Superpixel-Based Compressed Sensing and Backprojection Processing.

Christina Bonfert, Elias Ruopp,Christian Waldschmidt

IEEE Trans. Geosci. Remote. Sens.(2024)

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摘要
Radars mounted on unmanned aerial vehicles (UAVs) enable a high flexibility on data acquisition since arbitrary and especially non-linear flight trajectories can be achieved. Compared to linear flight trajectories, non-linear trajectories achieve better image quality and allow the scene and targets to be observed from different angles, thereby capturing angle-dependent features. However, inversion of synthetic aperture radar (SAR) data for non-linear apertures and sample acquisition is computationally taxing and artifacts may arise in the image due to the aperture’s structure. In order to suppress aperture artifacts and clutter in the SAR image, a backprojection imaging algorithm combined with compressed sensing methods is proposed. In this work, an efficient way to calculate the backprojection in a compressed sensing framework is described that does not require interpolation steps. Since SAR images are neither strictly sparse nor noise dominated, an adapted compressed sensing algorithm is proposed that accounts for clutter and extended targets which are spread across multiple image pixels. In addition, an image segmentation approach is presented that enables faster processing while being robust to extended targets located at segment edges. With the proposed approach, SAR images of arbitrary flight paths can be processed efficiently with fewer acquisition points while achieving better clutter suppression at the same image quality compared to equally dense measurement sets.
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关键词
backprojection,complex approximate message passing (CAMP),compressed sensing,FMCW,radar,synthetic aperture radar (SAR),UAV
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