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Augmenting Real Data with Synthetic Data: An Application in Assessing Radio-Isotope Identification Algorithms

机译:用合成数据增强真实数据:在评估放射性同位素识别算法中的应用

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The performance of Radio-Isotope IDentification (RIID) algorithms using gamma spectroscopy is increasingly becoming important. For example, sensors at locations that screen for illicit nuclear material rely on isotope identification to resolve innocent nuisance alarms arising from naturally occurring radioactive material. Recent data collections for RIID testing consist of repeat measurements for each of several scenarios to test RIID algorithms. Efficient allocation of measurement resources requires an appropriate number of repeats for each scenario. To help allocate measurement resources in such data collections for RIID algorithm testing, we consider using only a few real repeats per scenario. In order to reduce uncertainty in the estimated RIID algorithm performance for each scenario, the potential merit of augmenting these real repeats with realistic synthetic repeats is also considered. Our results suggest that for the scenarios and algorithms considered, approximately 10 real repeats augmented with simulated repeats will result in an estimate having comparable uncertainty to the estimate based on using 60 real repeats.
机译:使用伽马能谱的放射性同位素识别(RIID)算法的性能变得越来越重要。例如,筛选非法核材料的地点的传感器依靠同位素识别来解决由天然放射性物质引起的无害滋扰警报。 RIID测试的最新数据收集包括对几种情况中的每一种的重复测量,以测试RIID算法。有效分配测量资源需要针对每种情况进行适当数量的重复。为了帮助在此类数据集中分配测量资源以进行RIID算法测试,我们考虑每个方案仅使用几个实际重复项。为了减少每种情况下估计的RIID算法性能的不确定性,还考虑了用实际的合成重复序列增强这些真实的重复序列的潜在优点。我们的结果表明,对于所考虑的场景和算法,大约10个真实重复(通过模拟重复进行扩充)将导致与使用60个真实重复时的估计具有可比的不确定性。

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