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Parallel implementation of an iterative PCA algorithm for hyperspectral images on a manycore platform

机译:在Manycore平台上并行实现高光谱图像的迭代PCA算法

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This paper presents a study of the par alle lization possibilities of a Non-Linear Iterative Partial Least Squares algorithm and its adaptation to a Massively Parallel Processor Array manycore architecture, which assembles 256 cores distributed over 16 clusters. The aim of this work is twofold: first, to test the behavior of iterative, complex algorithms in a manycore architecture; and, secondly, to achieve real-time processing of hyperspectral images, which is fixed by the image capture rate of the hyperspectral sensor. Real-time is a challenging objective, as hyperspectral images are composed of extensive volumes of spectral information. This issue is usually addressed by reducing the image size prior to the processing phase itself. Consequently, this paper proposes an analysis of the intrinsic parallelism of the algorithm and its subsequent implementation on a manycore architecture. As a result, an average speedup of 13 has been achieved when compared to the sequential version. Additionally, this implementation has been compared with other state-of-the-art applications, outperforming them in terms of performance.
机译:本文介绍了非线性迭代部分最小二乘算法的并行化可能性及其对大规模并行处理器阵列多核架构的适应性研究,该架构组装了分布在16个集群上的256个核。这项工作的目的是双重的:首先,在多核体系结构中测试迭代,复杂算法的行为;其次,实现对高光谱图像的实时处理,这由高光谱传感器的图像捕获率决定。实时是一项具有挑战性的目标,因为高光谱图像由大量光谱信息组成。通常通过在处理阶段本身之前减小图像大小来解决此问题。因此,本文提出了对该算法的内在并行性及其在多核体系结构上的后续实现的分析。结果,与顺序版本相比,平均速度提高了13倍。此外,已将该实现与其他最新应用程序进行了比较,在性能方面胜过其他应用程序。

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