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Anomaly detection in noisy hyperspectral imagery

机译:嘈杂的高光谱图像中的异常检测

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Anomaly detection in hyperspectral imagery seeks to identify a small subset of pixels whose spectra differ most significantly from the background. The challenge is to characterize the background and noise well enough to recognize which observations are truly distinct and not simply noise outliers. The covariance-based RXD operator was developed to select low-probability pixel spectra and is therefore sensitive to noise. We compare the RXD operator to a Euclidean metric weighted by the inverse of the estimated spectral noise variance. We then combine the weighted Euclidean metric with RXD using a Lagrange multiplier and demonstrate that this formulation retains RXD's emphasis on small clusters while controlling the impact of noise. An optimum value of the Lagrange multiplier is determined based on the number of bands. We explore the utility of normalizing the pixel spectra as a step in anomaly detection. Results for the RXD, weighted-Euclidean, and Lagrange approach are presented using AVIRIS and HYDICE imagery. Based on these results, we conclude that the Euclidean, although robust to noise, does little more than emphasize the brightest pixels. The Lagrange detector selects the same regions as RXD while significantly reducing the impact of noise.
机译:高光谱图像中的异常检测旨在识别其光谱与背景差异最大的一小部分像素。面临的挑战是如何充分表征背景和噪声,以识别哪些观测值真正独特,而不仅仅是噪声异常值。基于协方差的RXD运算符用于选择低概率像素光谱,因此对噪声敏感。我们将RXD算子与通过估计频谱噪声方差的倒数加权的欧几里得度量进行比较。然后,我们使用拉格朗日乘数将加权欧几里得度量与RXD结合在一起,并证明此公式在控制噪声影响的同时,保留了RXD对小集群的强调。拉格朗日乘数的最佳值基于频带的数量确定。我们探索归一化像素光谱作为异常检测步骤的实用程序。使用AVIRIS和HYDICE图像展示了RXD,加权欧几里得和拉格朗日方法的结果。根据这些结果,我们得出结论,欧几里得虽然对噪声具有鲁棒性,但仅能强调最亮的像素。拉格朗日探测器选择与RXD相同的区域,同时显着降低噪声的影响。

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