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Cluster versus GPU implementation of an Orthogonal Target Detection Algorithm for Remotely Sensed Hyperspectral Images

机译:群集与GPU实现远程感测超光图像的正交目标检测算法

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Remotely sensed hyperspectral imaging instruments provide high-dimensional data containing rich information in both the spatial and the spectral domain. In many surveillance applications, detecting objects (targets) is a very important task. In particular, algorithms for detecting (moving or static) targets, or targets that could expand their size (such as propagating fires) often require timely responses for swift decisions that depend upon high computing performance of algorithm analysis. In this paper, we develop parallel versions of a target detection algorithm based on orthogonal subspace projections. The parallel implementations are tested in two types of parallel computing architectures: a massively parallel cluster of computers called Thunderhead and available at NASA’s Goddard Space Flight Center in Maryland, and a commodity graphics processing unit (GPU) of NVidia GeForce GTX 275 type. While the cluster-based implementation reveals itself as appealing for information extraction from remote sensing data already transmitted to Earth, the GPU implementation allows us to perform near real-time anomaly detection in hyperspectral scenes, with speedups over 50x with regards to a highly optimized serial version. The proposed parallel algorithms are quantitatively evaluated using hyperspectral data collected by the NASA’s Airborne Visible Infra-Red Imaging Spectrometer (AVIRIS) system over the World Trade Center (WTC) in New York, five days after the attacks that collapsed the two main towers in the WTC complex.
机译:远程感测的高光谱成像仪器提供了在空间和光谱域中包含丰富信息的高维数据。在许多监视应用中,检测对象(目标)是一个非常重要的任务。特别地,用于检测(移动或静态)目标的算法,或可以扩展其大小的目标(例如传播火灾)通常需要及时响应依赖于算法分析的高计算性能的迅速决策。在本文中,我们基于正交子空间投影开发了目标检测算法的并行版本。并行实现是以两种类型的并行计算架构测试的:一个叫做雷霆的大型计算机集群,在马里兰州的NASA的戈达德太空飞行中心提供,以及NVIDIA GeForce GTX 275类型的商品图形处理单元(GPU)。虽然基于群集的实现揭示了从已经传输到地球的遥感数据的信息提取的吸引力,但GPU实现允许我们在高光谱场景中执行近实时异常检测,而高度优化的串行有超过50倍的加速。版本。所提出的并行算法使用NASA的空中可见的红外线成像光谱仪(WTC)在纽约世界贸易中心(WTC)上的攻击之后的攻击后五天,定量地评估了纽约世界贸易中心(WTC)的高光谱数据。 WTC复杂。

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