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Efficient ELM-Based Techniques for the Classification of Hyperspectral Remote Sensing Images on Commodity GPUs

机译:基于高效ELM的商品GPU上高光谱遥感图像分类技术

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摘要

Extreme learning machine (ELM) is an efficient learning algorithm that has been recently applied to hyperspectral image classification. In this paper, the first implementation of the ELM algorithm fully developed for graphical processing unit (GPU) is presented. ELM can be expressed in terms of matrix operations so as to take advantage of the single instruction multiple data (SIMD) computing paradigm of the GPU architecture. Additionally, several techniques like the use of ensembles, a spatial regularization algorithm, and a spectral–spatial classification scheme are applied and projected to GPU in order to improve the accuracy results of the ELM classifier. In the last case, the spatial processing is based on the segmentation of the hyperspectral image through a watershed transform. The experiments are performed on remote sensing data for land cover applications achieving competitive accuracy results compared to analogous support vector machine (SVM) strategies with significantly lower execution times. The best accuracy results are obtained with the spectral–spatial scheme based on applying watershed and a spatially regularized ELM.
机译:极限学习机(ELM)是一种高效的学习算法,最近已应用于高光谱图像分类。本文介绍了针对图形处理单元(GPU)完全开发的ELM算法的第一个实现。可以用矩阵运算来表示ELM,以便利用GPU架构的单指令多数据(SIMD)计算范例。另外,为了提高ELM分类器的准确性,将诸如集成体的使用,空间正则化算法和频谱空间分类方案等多种技术应用于并投影到GPU。在最后一种情况下,空间处理基于通过分水岭变换对高光谱图像进行的分割。与具有显着更低的执行时间的类似支持向量机(SVM)策略相比,该实验是针对土地覆盖应用的遥感数据进行的,从而获得了具有竞争力的精度结果。使用基于分水岭和空间规则化ELM的光谱空间方案可获得最佳精度结果。

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