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Complexity-aware algorithm architecture for real-time enhancement of local anomalies in hyperspectral images

机译:用于实时增强高光谱图像中局部异常的复杂度感知算法架构

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Anomaly detection (AD) from remotely sensed multi-hyperspectral images is a powerful tool in many applications, such as strategic surveillance and search and rescue operations. In a typical operational scenario, an airborne hyperspectral sensor searches a wide area to identify regions that may contain potential targets. These regions typically cue higher spatial-resolution sensors to provide target recognition and identification. While this procedure is mostly automated, an on-board operator is generally assigned to examine in real time the AD output and select the regions of interest to be sent for cueing. Real-time enhancement of local anomalies in images of the over flown scene can be presented to the operator to facilitate the decision-making process. Within this framework, one of the ultimate research interests is undoubtedly the design of complexity-aware AD algorithm architectures capable of assuring real-time or nearly real-time in-flight processing and prompt decision making. Among the different AD algorithms developed, this work focuses on those AD algorithms aimed at detecting small rare objects that are anomalous with respect to their local background. One of such algorithms, called RX algorithm, is based on a local Gaussian assumption for background and locally estimates its parameters from each pixel local neighborhood. RX has been recognized to be the benchmark AD algorithm for detecting local anomalies in multi-hyperspectral images. RX decision rule has been employed to develop computationally efficient algorithms tested in realtime operating systems. These algorithms rely upon a recursive block-based parameter estimation procedure that makes their processing and, in turn, their detection performance differ from those of original RX. In this paper, a complexity-aware algorithm architecture fully adaptable to real-time processing is presented that allows the computational load to be reduced with respect to original RX, while strictly following its original formulation and thus assuring the same detection performance. An experimental study is presented that analyzes in detail the complexity reduction, in terms of number of elementary operations, offered by the proposed architecture with respect to original RX. A real hyperspectral image of a scene with deployed targets has been employed to perform a case-study analysis of the complexity reduction to be experienced in different operational scenarios. The real data are also adopted to illustrate a possible strategy for on-board line-by-line enhanced visualization of anomalies for decision support.
机译:来自遥感的多光谱图像的异常检测(AD)是许多应用程序中的强大工具,例如战略监视以及搜索和救援行动。在典型的操作场景中,机载高光谱传感器会搜索广阔的区域,以识别可能包含潜在目标的区域。这些区域通常会提示较高的空间分辨率传感器以提供目标识别和标识。尽管此过程大部分是自动化的,但通常会指定一个车载操作员来实时检查AD输出并选择要发送以进行提示的感兴趣区域。可以向操作员呈现飞机飞越场景图像中局部异常的实时增强,以帮助决策过程。在此框架内,最终的研究兴趣无疑是设计能够确保实时或接近实时的飞行中处理并迅速做出决策的,具有复杂性的AD算法架构。在开发的不同AD算法中,这项工作着重于那些旨在检测与局部背景异常的小型稀有物体的AD算法。这种算法中的一种称为RX算法,是基于背景的局部高斯假设,并从每个像素局部邻域局部估计其参数。 RX已被公认为是用于检测多光谱图像中局部异常的基准AD算法。 RX决策规则已被用于开发在实时操作系统中测试的高效计算算法。这些算法依赖于基于递归块的参数估计过程,该过程使它们的处理以及检测性能与原始RX有所不同。在本文中,提出了一种完全适应实时处理的复杂性感知算法体系结构,该体系结构允许严格遵循原始RX的公式来降低原始RX的计算量,从而确保相同的检测性能。提出了一项实验研究,该研究详细分析了所提出的体系结构相对于原始RX提供的基本操作数量方面的复杂性降低。具有部署目标的场景的真实高光谱图像已被用来对复杂度降低的案例研究分析,以在不同的操作场景中进行体验。还采用实际数据来说明针对异常情况的板载逐行增强可视化的可能策略,以提供决策支持。

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