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Parallel Implementation of Polarimetric Synthetic Aperture Radar Data Processing for Unsupervised Classification Using the Complex Wishart Classifier

机译:复杂Wishart分类器对无监督分类的极化合成孔径雷达数据处理的并行实现

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摘要

This work investigates the parallel implementation of target decomposition and unsupervised classification algorithms for polarimetric synthetic aperture radar (POLSAR) data processing. The algorithms are implemented using two different parallel programming models: 1) clusters of CPUs, using message passing interface (MPI), and 2) commodity graphic processing units (GPUs), using the compute device unified architecture (CUDA). POLSAR data processing generally involves a large amount of computations as the full polarimetric information needs to be decomposed and analyzed. Our experiments reveal that GPU architectures provide a good framework for massive parallelization of POLSAR data processing. For instance, it is found that a single GPU can be more efficient than a cluster of 128 nodes with speedups of more than in comparison with the single processor times. The proposed implementation makes the best use of low-level features in the GPU architecture such as shared memories, while also providing coalesced accesses to memory in order to achieve maximum performance.
机译:这项工作研究了极化合成孔径雷达(POLSAR)数据处理的目标分解和无监督分类算法的并行实现。该算法使用两种不同的并行编程模型来实现:1)使用消息传递接口(MPI)的CPU集群,以及2)使用计算设备统一体系结构(CUDA)的商品图形处理单元(GPU)。 POLSAR数据处理通常涉及大量计算,因为需要分解和分析完整的极化信息。我们的实验表明,GPU架构为POLSAR数据处理的大规模并行化提供了一个良好的框架。例如,发现单个GPU可以比128个节点的集群更高效,并且比单个处理器时间要快得多。所提出的实现方案充分利用了GPU体系结构中的低级功能(例如共享内存),同时还提供了对内存的合并访问以实现最佳性能。

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