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Convolutional Neural Networks for Challenges in Automated Nuclide Identification

机译:卷积神经网络在自动核素识别中挑战

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摘要

Improvements in Radio-Isotope IDentification (RIID) algorithms have seen a resurgence in interest with the increased accessibility of machine learning models. Convolutional Neural Network (CNN)-based models have been developed to identify arbitrary mixtures of unstable nuclides from gamma spectra. In service of this, methods for the simulation and pre-processing of training data were also developed. The implementation of 1D multi-class, multi-label CNNs demonstrated good generalisation to real spectra with poor statistics and significant gain shifts. It is also shown that even basic CNN architectures prove reliable for RIID under the challenging conditions of heavy shielding and close source geometries, and may be extended to generalised solutions for pragmatic RIID.
机译:无线电同位素识别(RIID)算法的改进已经看到了利益的复兴,因为机器学习模型的可达性增加了兴趣。已经开发了卷积神经网络(CNN)基础的模型以识别来自γ光谱的不稳定核苷酸的任意混合物。在此类服务中,还开发了用于仿真和预处理的方法。 1D多类的实施,多标签CNNS对实际光谱的良好普遍性呈现出差异差,差异差和显着增幅。还表明甚至基本的CNN架构在沉重的屏蔽和近源几何形状的具有挑战性条件下,甚至基本的CNN架构证明了RIID,并且可以扩展到用于务实的RIID的广义解决方案。

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