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Parallel Implementation of RX Anomaly Detection on Multi-Core Processors: Impact of Data Partitioning Strategies

机译:RX异常检测对多核处理器的平行实现:数据分区策略的影响

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Anomaly detection is an important task for remotely sensed hyperspectral data exploitation. One of the most widely used and successful algorithms for anomaly detection in hyperspectral images is the Reed-Xiaoli (RX) algorithm. Despite its wide acceptance and high computational complexity when applied to real hyperspectral scenes, few documented parallel implementations of this algorithm exist, in particular for multi-core processors. The advantage of multi-core platforms over other specialized parallel architectures is that they are a low-power, inexpensive, widely available and well-known technology. A critical issue in the parallel implementation of RX is the sample covariance matrix calculation, which can be approached in global or local fashion. This aspect is crucial for the RX implementation since the consideration of a local or global strategy for the computation of the sample covariance matrix is expected to affect both the scalability of the parallel solution and the anomaly detection results. In this paper, we develop new parallel implementations of the RX in multi-core processors and specifically investigate the impact of different data partitioning strategies when parallelizing its computations. For this purpose, we consider both global and local data partitioning strategies in the spatial domain of the scene, and further analyze their scalability in different multi-core platforms. The numerical effectiveness of the considered solutions is evaluated using receiver operating characteristics (ROC) curves, analyzing their capacity to detect thermal hot spots (anomalies) in hyperspectral data collected by the NASA's Airborne Visible Infra-Red Imaging Spectrometer system over the World Trade Center in New York, five days after the terrorist attacks of September 11th, 2001.
机译:异常检测是用于遥感高光谱数据开发的重要任务。之一的用于在高光谱图像异常检测最广泛使用的和成功的算法是里德 - 小丽(RX)算法。尽管它的广泛接受和计算复杂度很高,当应用于实际的高光谱的场景,该算法存在的一些记录并行实现,特别是多核处理器。相对于其他专业的并行架构的多核心平台的优势在于他们是一个低功耗,价格低廉,广泛使用和众所周知的技术。在并行实现RX的一个关键问题是样本协方差矩阵计算,可以在全局或局部的方式接近。因为局部或全局的战略样本协方差矩阵的计算的代价预期影响并行解决方案的同时可扩展性和异常检测结果这方面是RX实施至关重要。在本文中,我们开发多核处理器的RX新的并行实现,具体探讨不同的数据并行其计算时的分区策略的影响。为此,我们认为全球和本地数据在场景的空间域划分策略,并进一步分析其可扩展性在不同多核平台。在考虑解决方案的数值效果是使用受试者工作特征(ROC)曲线进行评估,分析他们的能力,由美国航空航天局的机载可见光红外成像光谱仪系统通过在世界贸易中心收集的高光谱数据,以检测热热点(异常)纽约,2001年9月11日的恐怖袭击后五天。

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