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GPU Parallel Optimization of Hyperspectral Image Kernel Sparse Representation Classification Based on Spatial-Spectral Graph Regularization

机译:基于空间谱图规范化的高光谱图像内核稀疏表示分类的GPU并行优化

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With the development of hyperspectral remote sensing information processing, hyperspectral image classification becomes a hot topic. The algorithm of kernel sparse representation classification based on spatial-spectral graph regularization and sparsity concentration index (SSGSCI-KSRC) gains a good result. Due to the big scale of hyperspectral image data, time-critical requirement in the practical application makes it impossible to use the original SSGSCI-KSRC algorithm. This paper proposes a parallelization method for SSGSCI-KSRC algorithm. The optimization method achieves the efficient calculation operations of hyperspectral image matrix data, coalesces memory accesses to reduce the time of transferring data to the GPU devices, and designs proper kernel functions in the classification algorithm. The experimental results demonstrate that the parallel SSGSCI-KSRC algorithm obtains a better result in terms of computational performance when the accuracy stays the same.
机译:随着高光谱遥感信息处理的开发,高光谱图像分类变为热门话题。基于空间谱图正规化和稀疏浓度指数(SSGSCI-KSRC)的内核稀疏表示分类算法增加了良好的结果。由于高光谱图像数据的大规模,实际应用中的时间关键要求使得不可能使用原始的SSGSCI-KSRC算法。本文提出了一种SSGSCI-KSRC算法的并行化方法。优化方法实现高光谱图像矩阵数据的有效计算操作,结合存储器访问将数据传输到GPU设备的时间,并在分类算法中设计适当的内核功能。实验结果表明,当准确度保持不变时,并行SSGSCI-KSRC算法在计算性能方面获得更好的结果。

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