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Wavelet-Based Classification of Hyperspectral Images Using Extended Morphological Profiles on Graphics Processing Units

机译:基于小波的高光谱图像分类,使用图形处理单元上的扩展形态学特征

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摘要

The availability of graphics processing units (GPUs) provides a low-cost solution to real-time processing, which may benefit many remote sensing applications. In this paper, a spectral–spatial classification scheme for hyperspectral images is specifically adapted for computing on GPUs. It is based on wavelets, extended morphological profiles (EMPs), and support vector machine (SVM). Additionally, a preprocessing stage is used to remove noise in the original hyperspectral image. The local computation of the techniques used in the proposed scheme makes them particularly suitable for parallel processing by blocks of threads in the GPU. Moreover, a block-asynchronous updating process is applied to the EMP to speedup the morphological reconstruction. The results over different hyperspectral images show that the execution can be speeded up to compared to an efficient OpenMP parallel implementation, achieving real-time hyperspectral image classification while maintaining the high classification accuracy values of the original classification scheme.
机译:图形处理单元(GPU)的可用性为实时处理提供了一种低成本解决方案,这可能会使许多遥感应用受益。在本文中,高光谱图像的光谱空间分类方案特别适合在GPU上进行计算。它基于小波,扩展形态学轮廓(EMP)和支持向量机(SVM)。另外,预处理阶段用于去除原始高光谱图像中的噪声。所提出的方案中使用的技术的本地计算使其特别适用于GPU中线程块的并行处理。此外,将块异步更新过程应用于EMP以加速形态重建。在不同的高光谱图像上的结果表明,与有效的OpenMP并行实现相比,可以加快执行速度,在保持原始分类方案的高分类精度值的同时,实现了实时高光谱图像分类。

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