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Proceedings Paper

Parallelism exploitation of a PCA algorithm for hyperspectral images using RVC-CAL
Author(s): R. Lazcano; I. Sidrach-Cardona ; D. Madroñal; K. Desnos; M. Pelcat; E. Juárez; C. Sanz
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Paper Abstract

Hyperspectral imaging (HI) collects information from across the electromagnetic spectrum, covering a wide range of wavelengths. The tremendous development of this technology within the field of remote sensing has led to new research fields, such as cancer automatic detection or precision agriculture, but has also increased the performance requirements of the applications. For instance, strong time constraints need to be respected, since many applications imply real-time responses. Achieving real-time is a challenge, as hyperspectral sensors generate high volumes of data to process. Thus, so as to achieve this requisite, first the initial image data needs to be reduced by discarding redundancies and keeping only useful information. Then, the intrinsic parallelism in a system specification must be explicitly highlighted.

In this paper, the PCA (Principal Component Analysis) algorithm is implemented using the RVC-CAL dataflow language, which specifies a system as a set of blocks or actors and allows its parallelization by scheduling the blocks over different processing units. Two implementations of PCA for hyperspectral images have been compared when aiming at obtaining the first few principal components: first, the algorithm has been implemented using the Jacobi approach for obtaining the eigenvectors; thereafter, the NIPALS-PCA algorithm, which approximates the principal components iteratively, has also been studied. Both implementations have been compared in terms of accuracy and computation time; then, the parallelization of both models has also been analyzed.

These comparisons show promising results in terms of computation time and parallelization: the performance of the NIPALS-PCA algorithm is clearly better when only the first principal component is achieved, while the partitioning of the algorithm execution over several cores shows an important speedup for the PCA-Jacobi. Thus, experimental results show the potential of RVC–CAL to automatically generate implementations which process in real-time the large volumes of information of hyperspectral sensors, as it provides advanced semantics for exploiting system parallelization.

Paper Details

Date Published: 24 October 2016
PDF: 13 pages
Proc. SPIE 10007, High-Performance Computing in Geoscience and Remote Sensing VI, 100070H (24 October 2016); doi: 10.1117/12.2241643
Show Author Affiliations
R. Lazcano, Univ. Politécnica de Madrid (Spain)
I. Sidrach-Cardona , Univ. Politécnica de Madrid (Spain)
D. Madroñal, Univ. Politécnica de Madrid (Spain)
K. Desnos, IETR, Institut National des Sciences Appliquées de Rennes, CNRS (France)
M. Pelcat, IETR, Institut National des Sciences Appliquées de Rennes, CNRS (France)
E. Juárez, Univ. Politécnica de Madrid (Spain)
C. Sanz , Univ. Politécnica de Madrid (Spain)

Published in SPIE Proceedings Vol. 10007:
High-Performance Computing in Geoscience and Remote Sensing VI
Bormin Huang; Sebastián López; Zhensen Wu; Jose M. Nascimento; Jun Li; Valeriy V. Strotov, Editor(s)

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