On Feature, Classifier and Detector Fusers for 235U Signatures Using Gamma Spectral Counts

N. Rao, D. Hooper, J. Ladd-Lively
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Abstract

Three types of information fusion strategies are studied to assess the performance of classifiers for detecting low-level 235U radiation sources, using features obtained from gamma spectra of NaI detectors. These three strategies are based on using two spectral region features, fusing eight classifiers of diverse designs, and fusing multiple detectors located at different positions around the source. The inner, middle and outer groups of detectors, within a formation of two concentric circles and a spiral of 21 detectors, are identified based on their distance to the source, which is located at the center. This study provides two main qualitative insights into this classification task. First, the fusion of detectors leads to an overall improved classification performance, least in the inner group, most in the outer group, and in between for the middle group. Second, several classifiers and fusers achieve lower training error which does not translate to lower generalization error, indicating their over-fitting to training data.
基于伽马谱计数的235U特征、分类器和检测器融合器
研究了三种类型的信息融合策略,以评估分类器检测低水平235U辐射源的性能,使用从NaI探测器的伽马光谱中获得的特征。这三种策略基于两个光谱区域特征,融合八个不同设计的分类器,融合位于源周围不同位置的多个探测器。在一个由21个探测器组成的两个同心圆和螺旋形结构中,根据它们与位于中心的源的距离来识别探测器的内、中、外三组。这项研究为这个分类任务提供了两个主要的定性见解。首先,探测器的融合导致分类性能的整体提高,内部组最低,外部组最高,中间组介于两者之间。其次,一些分类器和融合器实现了较低的训练误差,但这并没有转化为较低的泛化误差,表明它们对训练数据的过度拟合。
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