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Sparsity-driven despeckling method with low memory usage

机译:具有低内存使用率的稀疏驱动去斑点方法

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Speckle noise which is inherent to Synthetic Aperture Radar (SAR) imaging makes it difficult to detect targets and recognize spatial patterns on earth. Thus, despeckling is critical and used as a preprocessing step for smoothing homogeneous regions while preserving features such as edges and point scatterers. In this study, a low-memory version of the previously proposed sparsity-driven despeckling (SDD) method is proposed. All steps of the method are parallelized using OpenMP on CPU and CUDA on GPU. Execution time and despeckling performance are shown using real-world SAR images.
机译:合成孔径雷达(SAR)成像固有的斑点噪声使检测目标和识别地球上的空间图案变得困难。因此,去斑点是至关重要的,并且在保持诸如边缘和点散射体之类的特征的同时,也被用作平滑均质区域的预处理步骤。在这项研究中,提出了以前提出的稀疏驱动去斑点(SDD)方法的低内存版本。使用CPU上的OpenMP和GPU上的CUDA可以并行化该方法的所有步骤。使用真实的SAR图像显示执行时间和去斑点性能。

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