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Lost gamma source detection algorithm based on convolutional neural network

机译:基于卷积神经网络的丢失伽马源检测算法

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Based on the convolutional neural network (CNN), a novel technique is investigated for lost gamma source detection in a room. The CNN is trained with the result of a GEANT4 simulation containing a gamma source inside a meshed room. The dataset for the training process is the deposited energy in the meshes of different n-step paths. The neural network is optimized with parameters such as the number of input data and path length. Based on the proposed method, the place of the gamma source can be recognized with reasonable accuracy without human intervention. The results show that only by 5 measurements of the energy deposited in a 5-step path, (5 sequential points 50?cm apart within 1600 meshes), the gamma source location can be estimated with 94% accuracy. Also, the method is tested for the room geometry containing the interior walls. The results show 90% accuracy with the energy deposition measurement in the meshes of a 5-step path.
机译:基于卷积神经网络(CNN),研究了一个新颖的技术在房间中丢失的伽马源检测。 CNN训练,其导致含有啮合室内的GAMMA源的GEANT4模拟结果。 培训过程的数据集是在不同N步路径的网格中沉积能量。 用诸如输入数据和路径长度的参数进行优化神经网络。 基于所提出的方法,可以在没有人为干预的情况下以合理的准确度识别伽马源的位置。 结果表明,仅在5步路径中沉积的能量的5测量值(在1600纤维内分开550Ω·cm),可以以94%的精度估计伽马源位置。 此外,该方法用于含有内壁的房间几何形状。 结果显示了90%的精度,在5步路径的网格中的能量沉积测量。

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