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Spatio-spectral Gaussian random field modeling approach for target detection on hyperspectral data obtained in very low SNR

机译:用于以极低SNR获得的高光谱数据进行目标检测的时空光谱高斯随机场建模方法

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Random field geometry has proven relevant results in the context of statistical hypothesis test for solving detection problems in signal and image processing. This paper emphasizes an unsupervised target detection problem in hyperspectral noisy images with very low signal-to-noise ratio (SNR) conditions. The targets have unknown spectral signatures located at unknown bandwidths and positions. To this aim, a spatio-spectral Gaussian random field (SS-GRF) model is proposed to provide a statistical inference about these targets in the full hyperspectral space by means of the geometric features of the noise, notably the expected Euler-characteristic (EC). The performance of the proposed method is demonstrated by the ROC curve analysis on synthetic examples, and confirms its efficiency and capacity to detect hyperspectral targets (astrophysical objects, remote sensing targets). At the end, we discuss the impact of the spectral dimensions on the method.
机译:随机场几何结构已在统计假设检验的背景下证明了相关结果,用于解决信号和图像处理中的检测问题。本文强调了在具有极低信噪比(SNR)条件的高光谱噪声图像中的无监督目标检测问题。目标具有位于未知带宽和位置的未知光谱特征。为此,提出了一种时空光谱高斯随机场(SS-GRF)模型,以通过噪声的几何特征(尤其是预期的欧拉特征(EC))在整个高光谱空间中提供有关这些目标的统计推断。 )。通过对合成示例进行ROC曲线分析证明了该方法的性能,并证实了其检测高光谱目标(天体目标,遥感目标)的效率和能力。最后,我们讨论了光谱尺寸对方法的影响。

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