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Study of the influence of pre-processing on local statistics-based anomaly detector results

机译:预处理对局部统计学的异常探测器结果的影响研究

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Anomaly detection in hyperspectral data has received much attention for various applications and is especially important for defense and security applications. Anomaly detection detects pixels in the hyperspectral data cube whose spectra differ significantly from the background spectra [1]. Most existing methods estimate the spectra of the (local or global) background and then detect anomalies as pixels with a large spectral distance w.r.t. the determined background spectra. Many types of anomaly detectors have been proposed in literature. This paper reports on a sensitivity study that tries to determine an adequate pre-processing chain for anomaly detection in hyperspectral scenes. The study is performed on a set of five hyperspectral datasets and focuses on statistics-based anomaly detectors.
机译:异常在高光谱数据中检测到各种应用中受到了很多关注,对防御和安全应用尤为重要。异常检测检测从背景光谱显着不同的高光谱数据立方体中的像素[1]。大多数现有方法估计(本地或全球)背景的光谱,然后检测异常作为具有大谱距离W.R.T的像素。确定的背景光谱。在文献中提出了许多类型的异常探测器。本文报告了一种灵敏度研究,试图确定在高光谱场景中的异常检测的适当预处理链。该研究是在一组五个高光谱数据集上进行,并侧重于基于统计的异常探测器。

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