宇宙射线
高光谱成像
宇宙癌症数据库
离群值
宇宙方差
噪音(视频)
物理
紫外线
拉曼光谱
遥感
光学
天文
计算机科学
地质学
红移
人工智能
银河系
图像(数学)
作者
Kyle Uckert,R. Bhartia,John Michel
标识
DOI:10.1177/0003702819850584
摘要
Cosmic rays can degrade Raman hyperspectral images by introducing high-intensity noise to spectra, obfuscating the results of downstream analyses. We describe a novel method to detect cosmic rays in deep ultraviolet Raman hyperspectral data sets adapted from existing cosmic ray removal methods applied to astronomical images. This method identifies cosmic rays as outliers in the distribution of intensity values in each wavelength channel. In some cases, this algorithm fails to identify cosmic rays in data sets with high inter-spectral variance, uncorrected baseline drift, or few spectra. However, this method effectively identifies cosmic rays in spatially uncorrelated hyperspectral data sets more effectively than other cosmic ray rejection methods and can potentially be employed in commercial and robotic Raman systems to identify cosmic rays semi-autonomously.
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