基于大规模并行处理器阵列(MPPA)平台的线性支持向量机的高光谱图像分类

D. Madroñal, R. Lazcano, H. Fabelo, S. Ortega, G. Callicó, E. Juárez, C. Sanz
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引用次数: 4

摘要

本文研究了在大规模并行处理器阵列平台上运行的线性核支持向量机(SVM)分类器的并行开发。该系统连接256个并行工作的内核,并分组在16个不同的集群中。本研究的主要目标是在MPPA平台上开发SVM分类器的最佳实现,同时分析了高光谱图像分类器的架构瓶颈。以医学图像为实验对象,采用三种策略对SVM分类进行并行化:i)单核和多核处理,ii)单聚类和多聚类分析,iii)单缓冲和双缓冲执行。因此,在单个集群中并行化SVM分类过程时,实现了11.8的平均核心处理加速。相反,在顺序情况下,由于数据通信占总执行时间的34.7%,因此总加速上限为2.9。使用双缓冲区方法,在单个集群上实现了2.84的总加速。最后,验证了便携式线性支持向量机的可行性。
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Hyperspectral image classification using a parallel implementation of the linear SVM on a Massively Parallel Processor Array (MPPA) platform
In this paper, a study of the parallel exploitation of a Support Vector Machine (SVM) classifier with a linear kernel running on a Massively Parallel Processor Array platform is exposed. This system joins 256 cores working in parallel and grouped in 16 different clusters. The main objective of the research has been to develop an optimal implementation of the SVM classifier on a MPPA platform whilst the architectural bottlenecks of the hyperspectral image classifier are analyzed. Experimenting with medical images, the parallelization of the SVM classification has been conducted using three strategies: i) single- and multi-core processing, ii) single- and multi-cluster analysis and iii) single- and double-buffer execution. As a result, an average core processing speedup of 11.8 has been achieved when parallelizing the SVM classification process in a single cluster. On the contrary, since data communication accounts for 34.7% of the total execution time in the sequential case, the total speedup is upper-bounded to 2.9. Using a double-buffer methodology, a total speedup of 2.84 has been achieved on a single cluster. At last, the feasibility of a portable version of a linear SVM has been demonstrated.
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