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Parallel Multiclass Support Vector Machine for Remote Sensing Data Classification on Multicore and Many-Core Architectures

机译:用于多核和多核体系结构的遥感数据分类的并行多类支持向量机

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摘要

Support Vector Machine (SVM) is a classification method that has been widely used in the domain of remote sensing for decades. Although SVM-based classification method achieves good performance for classification accuracy in many studies, it can become very time-consuming in some remote sensing applications such as hyperspectral image classification or large-scale land cover mapping. To improve the efficiency for SVM training and classification in remote sensing applications, we designed and implemented a highly efficient multiclass support vector machine (MMSVM) for × 86-based multicore and many-core architectures such as the Ivy Bridge CPUs and the Intel Xeon Phi coprocessor (MIC) based on our previous MIC-SVM library. Various analysis methods and optimization strategies are employed to fully utilize the multilevel parallelism of our studied architectures. We select several real-world remote sensing datasets to evaluate the performance of our proposed MMSVM. Compared with the widely used serial LIBSVM, our MMSVM achieves 6.3–31.1 (in training) and 4.9–32.2 (in classification) speedups on MIC, and 6.9–14.9 (in training) and 5.5–22.1 (in classification) speedups on the Ivy Bridge CPUs. We also conduct a performance comparison analysis on different platforms and provide some ideas on how to select the most suitable architecture for specific remote sensing classification problems in order to achieve the best performance.
机译:支持向量机(SVM)是一种分类方法,数十年来已广泛用于遥感领域。尽管在许多研究中基于SVM的分类方法在分类精度上均取得了良好的性能,但在某些遥感应用中(如高光谱图像分类或大规模土地覆被制图),它会变得非常耗时。为了提高遥感应用中SVM训练和分类的效率,我们针对基于×86的多核和多核架构(例如Ivy Bridge CPU和Intel Xeon Phi)设计并实现了高效的多类支持向量机(MMSVM)。基于我们以前的MIC-SVM库的协处理器(MIC)。我们采用了各种分析方法和优化策略来充分利用我们研究的体系结构的多级并行性。我们选择了几个现实世界的遥感数据集来评估我们提出的MMSVM的性能。与广泛使用的串行LIBSVM相比,我们的MMSVM在MIC上达到6.3–31.1(在训练中)和4.9–32.2(在分类中)加速,在常春藤上达到6.9–14.9(在训练中)和5.5–22.1(在分类中)加速桥接CPU。我们还将在不同平台上进行性能比较分析,并就如何针对特定的遥感分类问题选择最合适的体系结构以实现最佳性能提供一些想法。

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