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首页> 外文期刊>Journal of Real-Time Image Processing >Real-time anomaly detection in hyperspectral images using multivariate normal mixture models and GPU processing
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Real-time anomaly detection in hyperspectral images using multivariate normal mixture models and GPU processing

机译:使用多元正态混合模型和GPU处理实时检测高光谱图像中的异常

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摘要

Hyperspectral imaging, which records a detailed spectrum of light arriving in each pixel, has many potential uses in remote sensing as well as other application areas. Practical applications will typically require real-time processing of large data volumes recorded by a hyperspectral imager. This paper investigates the use of graphics processing units (GPU) for such real-time processing. In particular, the paper studies a hyperspectral anomaly detection algorithm based on normal mixture modelling of the background spectral distribution, a computationally demanding task relevant to military target detection and numerous other applications. The algorithm parts are analysed with respect to complexity and potential for par-allellization. The computationally dominating parts are implemented on an Nvidia GeForce 8800 GPU using the Compute Unified Device Architecture programming interface. GPU computing performance is compared to a multi-core central processing unit implementation. Overall, the GPU implementation runs significantly faster, particularly for highly data-parallelizable and arithmetically intensive algorithm parts. For the parts related to covariance computation, the speed gain is less pronounced, probably due to a smaller ratio of arithmetic to memory access. Detection results on an actual data set demonstrate that the total speedup provided by the GPU is sufficient to enable realtime anomaly detection with normal mixture models even for an airborne hyperspectral imager with high spatial and spectral resolution.
机译:高光谱成像记录了到达每个像素的详细光谱,在遥感以及其他应用领域中具有许多潜在用途。实际应用中通常需要实时处理由高光谱成像仪记录的大数据量。本文研究了将图形处理单元(GPU)用于这种实时处理。特别是,本文研究了基于背景光谱分布的正常混合建模的高光谱异常检测算法,与军事目标检测有关的计算要求很高的任务以及许多其他应用。分析算法部分的复杂性和潜在的同等位化。使用Compute Unified Device Architecture编程接口在Nvidia GeForce 8800 GPU上实现计算上占主导地位的部分。将GPU计算性能与多核中央处理器实现进行了比较。总体而言,GPU实现的运行速度明显加快,尤其是对于高度可数据并行化和算法密集的算法部分。对于与协方差计算相关的部分,速度增益不太明显,这可能是由于算术与内存访问的比率较小。实际数据集上的检测结果表明,即使对于具有高空间和光谱分辨率的机载高光谱成像仪,GPU所提供的总加速速度也足以实现使用常规混合模型进行实时异常检测。

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