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Gaussian mixture model based approach to anomaly detection in multi/hyperspectral images

机译:基于高斯混合模型的多/高光谱图像异常检测方法

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Anomaly detectors reveal the presence of objects/materials in a multi/hyperspectral image simply searching for those pixels whose spectrum differs from the background one (anomalies). This procedure can be applied directly to the radiance at the sensor level and has the great advantage of avoiding the difficult step of atmospheric correction. The most popular anomaly detector is the RX algorithm derived by Yu and Reed. It is based on the assumption that the pixels, in a region around the one under test, follow a single multivariate Gaussian distribution. Unfortunately, such a hypothesis is generally not met in actual scenarios and a large number of false alarms is usually experienced when the RX algorithm is applied in practice. In this paper, a more general approach to anomaly detection is considered based on the assumption that the background contains different terrain types (clusters) each of them Gaussian distributed. In this approach the parameters of each cluster are estimated and used in the detection process. Two detectors are considered: the SEM-RX and the K-means RX. Both the algorithms follow two steps: first, 1) the parameters of the background clusters are estimated, then, 2) a detection rule based on the RX test is applied. The SEM-RX stems from the GMM and employs the SEM algorithm to estimate the clusters' parameters; instead, the K-means RX resorts to the well known K-means algorithm to obtain the background clusters. An automatic procedure is defined, for both the detectors, to select the number of clusters and a novel criterion is proposed to set the test threshold. The performances of the two detectors are also evaluated on an experimental data set and compared to the ones of the RX algorithm. The comparative analysis is carried out in terms of experimental Receiver Operating Characteristics.
机译:异常探测器揭示了多/高光谱图像中的物体/材料的存在,只需搜索那些频谱与背景的像素(异常)的像素。该程序可以直接应用于传感器水平的辐射,并且具有避免难以校正的困难步骤的优点。最受欢迎的异常探测器是yu和reed衍生的RX算法。它基于假设像素在被测的一个区域中的像素遵循单个多变量高斯分布。遗憾的是,在实际情况下通常不满足这样的假设,并且当在实践中应用RX算法时通常经历大量的误报警报。在本文中,基于背景包含不同地形类型(集群)的假设,考虑更普遍的异常检测方法,其中每个地形类型(群集)高斯分布。在这种方法中,估计每个簇的参数并用于检测过程。考虑两个探测器:SEM-Rx和K-Means Rx。算法遵循两个步骤:首先,1)估计背景簇的参数,然后,2)应用了基于RX测试的检测规则。 SEM-RX源于GMM,采用SEM算法估算群集参数;相反,K-Means Rx度假村到众所周知的K-Mean算法,以获得背景簇。对于检测器,定义自动过程,以选择群集数量和新标准以设置测试阈值。还在实验数据集上评估两个检测器的性能,并与RX算法中的一个进行比较。在实验接收器操作特性方面进行比较分析。

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