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GPU Implementation of Target and Anomaly Detection Algorithms for Remotely Sensed Hyperspectral Image Analysis

机译:遥感高光谱图像分析的目标和异常检测算法的GPU实现

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Automatic target and anomaly detection are considered very important tasks for hyperspectral data exploitation. These techniques are now routinely applied in many application domains, including defence and intelligence, public safety, precision agriculture, geology, or forestry. Many of these applications require timely responses for swift decisions which depend upon high computing performance of algorithm analysis. However, with the recent explosion in the amount and dimensionality of hyperspectral imagery, this problem calls for the incorporation of parallel computing techniques. In the past, clusters of computers have offered an attractive solution for fast anomaly and target detection in hyperspectral data sets already transmitted to Earth. However, these systems are expensive and difficult to adapt to on-board data processing scenarios, in which low-weight and low-power integrated components are essential to reduce mission payload and obtain analysis results in (near) real-time, i.e., at the same time as the data is collected by the sensor. An exciting new development in the field of commodity computing is the emergence of commodity graphics processing units (GPUs), which can now bridge the gap towards on-board processing of remotely sensed hyperspectral data. In this paper, we describe several new GPU-based implementations of target and anomaly detection algorithms for hyperspectral data exploitation. The parallel algorithms are implemented on latest-generation Tesla C1060 GPU architectures, and quantitatively evaluated using hyperspectral data collected by NASA's AVIRIS system over the World Trade Center (WTC) in New York, five days after the terrorist attacks that collapsed the two main towers in the WTC complex.
机译:自动目标和异常检测被认为是高光谱数据开发非常重要的任务。这些技术现已常规应用于许多应用领域,包括国防和情报,公共安全,精密农业,地质或林业。这些应用中的许多应用都需要及时做出响应,以便迅速做出决策,这取决于算法分析的高计算性能。然而,随着近来高光谱图像的数量和维度的激增,该问题要求结合并行计算技术。过去,计算机集群已经为已经传输到地球的高光谱数据集中的快速异常和目标检测提供了一种有吸引力的解决方案。但是,这些系统昂贵且难以适应机载数据处理方案,在这些方案中,低重量和低功耗的集成组件对于减少任务有效载荷并实时(近)获得分析结果至关重要,即与传感器收集数据的时间相同。商品计算领域的一个令人振奋的新进展是商品图形处理单元(GPU)的出现,它们现在可以缩小与遥感高光谱数据的机载处理之间的差距。在本文中,我们描述了针对高光谱数据开发的目标和异常检测算法的几种基于GPU的新实现。并行算法在最新一代的Tesla C1060 GPU架构上实现,并使用由NASA的AVIRIS系统通过纽约世界贸易中心(WTC)收集的高光谱数据进行定量评估,这是恐怖袭击摧毁了纽约两座主塔的五天后。 WTC综合大楼。

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