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Parallel implementation of a hyperspectral image linear SVM classifier using RVC-CAL

机译:使用RVC-CAL的高光谱图像线性SVM分类器的并行实现

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Hyperspectral Imaging (HI) collects high resolution spectral information consisting of hundreds of bands across the electromagnetic spectrum -from the ultraviolet to the infrared range-. Thanks to this huge amount of information, an identification of the different elements that compound the hyperspectral image is feasible. Initially, HI was developed for remote sensing applications and, nowadays, its use has been spread to research fields such as security and medicine. In all of them, new applications that demand the specific requirement of real-time processing have appear. In order to fulfill this requirement, the intrinsic parallelism of the algorithms needs to be explicitly exploited. In this paper, a Support Vector Machine (SVM) classifier with a linear kernel has been implemented using a dataflow language called RVC-CAL. Specifically, RVC-CAL allows the scheduling of functional actors onto the target platform cores. Once the parallelism of the classifier has been extracted, a comparison of the SVM classifier implementation using LibSVM -a specific library for SVM applications- and RVC-CAL has been performed. The speedup results obtained for the image classifier depends on the number of blocks in which the image is divided; concretely, when 3 image blocks are processed in parallel, an average speed up above 2.50, with regard to the RVC-CAL sequential version, is achieved.
机译:高光谱成像(HI)收集由电磁光谱的数百个带组成的高分辨率光谱信息 - 从紫外线到红外线范围 - 。由于这种大量信息,鉴定了化合物高光谱图像的不同元素是可行的。最初,HI是为遥感应用而开发的,现在,其使用已经扩展到了研究领域,如安全性和医学。在所有这些中,需要对实时处理的特定要求的新应用程序出现。为了满足这一要求,需要明确地利用算法的内在并行性。在本文中,使用名为RVC-CAL的数据流语言来实现具有线性内核的支持向量机(SVM)分类器。具体地,RVC-CAL允许将功能作用仪调度到目标平台核心上。一旦提取了分类器的并行性,已经执行了使用用于SVM应用程序和RVC-CAR的Libsvm -a特定库的SVM分类器实现的比较。为图像分类器获得的加速结果取决于图像分割的块的数量;具体地,当3个图像块并行处理时,实现了在2.50上方的平均速度,关于RVC-CAL顺序版本。

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