基于主成分分析的噪声频谱峰值检测

E. Min, Mincheol Ko, Yongkwon Kim, J. Joung, Kisung Lee
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引用次数: 6

摘要

放射性同位素(RI)的光谱包含单个或多个光峰和所有能级的放射性活动。每个辐射源的这些特性由辐射监测(RM)系统测量。但是,如果辐射计数极低,源到探测器的距离太远,我们无法获得很好的光谱结果,但我们仍然可以测量一些计数统计量。因此,在噪声频谱中进行精确的峰值检测是RM系统中最重要的任务之一。在本研究中,我们开发了一种基于小波分解和主成分分析的精确峰检测方法。我们使用离散小波变换(DWT)来减少低计数频谱中不必要的高频噪声。为了减少背景辐射的影响,我们使用预先测量的背景光谱和计算的平方误差制作背景模板,以抑制低能级背景并保持真实的照片峰值。最后,对预处理后的数据进行了分析,并利用主成分分析法检测了照片峰。在不同距离用1微居里和10微居里测量铯137(Cs-137)和钡133(Ba133)。每个光谱都被收集了一秒钟,每种同位素总共储存了60组。研究结果表明,该算法具有较高的灵敏度和特异性,证明该算法适用于RM系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A peak detection in noisy spectrum using principal component analysis
A spectrum of a radio isotope (RI) contains a single or multiple photo-peaks and radio-activities of all energy levels. These characteristics of each RI source are measured by radiation monitor (RM) systems. However, if the radiation count is extremely low and source to detector distance is too far, we cannot acquire good spectroscopic results for RI identification by RM devices while we still able to measure some counting statistics. Thus, precise peak detection in noisy spectrums is one of the most important tasks in the RM system. In this study, we developed an accurate peak detection method based on wavelet decomposition followed by principal component analysis. We used a discrete wavelet transform (DWT) for reduction of unnecessary high frequency noises in low counts spectrums. To reduce effect of a background radiation, we made a background template using a pre-measured background spectrum and calculated square errors for suppressing a background of low energy levels and maintaining true photo-peaks. Finally, we analyzed pre-processed data and detected photo-peaks using PCA. We measured Cesium 137(Cs-137) and Barium 133(Ba133) with 1 and 10 micro curies collected from the various distance. Each spectrum was collected for a second and total 60 sets were stored for each isotope. Results of our research show that the proposed algorithm achieves high sensitivity and specificity, proving that the algorithm is appropriate for RM systems.
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