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RX architectures for real-time anomaly detection in hyperspectral images

机译:用于高光谱图像中实时异常检测的RX体系结构

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In the field of hyperspectral image processing, anomaly detection (AD) is a deeply investigated task whose goal is to find objects in the image that are anomalous with respect to the background. In many operational scenarios, detection, classification and identification of anomalous spectral pixels have to be performed in real time to quickly furnish information for decision-making. In this framework, many studies concern the design of computationally efficient AD algorithms for hyperspectral images in order to assure real-time or nearly real-time processing. In this work, a sub-class of anomaly detection algorithms is considered, i.e., those algorithms aimed at detecting small rare objects that are anomalous with respect to their local background. Among such techniques, one of the most established is the Reed-Xiaoli (RX) algorithm, which is based on a local Gaussian assumption for background clutter and locally estimates its parameters by means of the pixels inside a window around the pixel under test (PUT). In the literature, the RX decision rule has been employed to develop computationally efficient algorithms tested in realtime systems. Initially, a recursive block-based parameter estimation procedure was adopted that makes the RX processing and the detection performance differ from those of the original RX. More recently, an update strategy has been proposed which relies on a line-by-line processing without altering the RX detection statistic. In this work, the above-mentioned RX real-time oriented techniques have been improved using a linear algebra-based strategy to efficiently update the inverse covariance matrix thus avoiding its computation and inversion for each pixel of the hyperspectral image. The proposed strategy has been deeply discussed pointing out the benefits introduced on the two analyzed architectures in terms of overall number of elementary operations required. The results show the benefits of the new strategy with respect to the original architectures.
机译:在高光谱图像处理领域,异常检测(AD)是一项经过深入研究的任务,其目的是在图像中查找相对于背景异常的对象。在许多操作方案中,必须实时执行异常光谱像素的检测,分类和识别,以快速提供信息以供决策。在此框架中,许多研究都关注用于高光谱图像的计算有效的AD算法的设计,以确保实时或接近实时的处理。在这项工作中,考虑了异常检测算法的子类,即那些旨在检测相对于其局部背景异常的小型稀有物体的算法。在此类技术中,最成熟的技术之一是Reed-Xiaoli(RX)算法,该算法基于背景杂波的局部高斯假设,并通过被测像素(PUT)周围窗口内的像素来局部估计其参数)。在文献中,RX决策规则已被用来开发在实时系统中测试的高效计算算法。最初,采用了基于递归块的参数估计程序,该程序使RX处理和检测性能与原始RX有所不同。最近,提出了一种更新策略,该策略依赖于逐行处理而不改变RX检测统计量。在这项工作中,使用基于线性代数的策略对上述RX实时定向技术进行了改进,以有效地更新逆协方差矩阵,从而避免了对高光谱图像的每个像素进行计算和反演。已经对所提出的策略进行了深入的讨论,指出了在两种基本体系结构上所需的基本操作总数方面所带来的好处。结果显示了新策略相对于原始体系结构的好处。

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