论文标题

用于重建3D粒子端点的点建议网络,在液体氩时间投影室中的子像素精度

Point Proposal Network for Reconstructing 3D Particle Endpoints with Sub-Pixel Precision in Liquid Argon Time Projection Chambers

论文作者

Dominé, Laura, de Soux, Pierre Côte, Drielsma, François, Koh, Dae Heun, Itay, Ran, Lin, Qing, Terao, Kazuhiro, Tsang, Ka Vang, Usher, Tracy L.

论文摘要

液体氩时间投影室(LARTPC)是记录带电颗粒轨迹的2D或3D图像的粒子成像探测器。识别这些图像中的兴趣点,即诸如muons和质子之类的轨迹颗粒轨迹的初始和末端点,以及电磁淋浴式颗粒轨迹(例如电子和伽马射线)的初始点,是识别和分析这些颗粒的至关重要步骤,并影响了这些粒子,并影响了物理信号的界面,例如中心互动。积分提案网络旨在发现这些特定的兴趣点。该算法用亚素的精度预测其空间位置,还确定了已确定的关注点的类别。用作基准测试,素分辨率分辨率为3mm/voxel的Pilarnet公共LARTPC数据样本,我们的算法成功地预测了从提供的真实点位置的3和10〜素的3D点的96.8%和97.8%。对于最接近真实点位置的3个体素内预测的3D点,发现中值为0.25素体,可达到亚素水平的精度。此外,我们报告了我们对算法预测与提供的真实点位置不同的错误的分析。在视觉扫描的50个错误中,有25个是由于对真实位置的定义,有15个是合法的错误,物理学家在视觉上不能在视觉上不同意该算法的预测,而10个是我们希望将来要改善的真正错误。此外,使用这些预测的点,我们证明了一种简单的算法,将3D体素群群群群群群构成单个轨道样轨迹,其聚类效率,纯度和调整后的RAND指数分别为96%,93%和91%。

Liquid Argon Time Projection Chambers (LArTPC) are particle imaging detectors recording 2D or 3D images of trajectories of charged particles. Identifying points of interest in these images, namely the initial and terminal points of track-like particle trajectories such as muons and protons, and the initial points of electromagnetic shower-like particle trajectories such as electrons and gamma rays, is a crucial step of identifying and analyzing these particles and impacts the inference of physics signals such as neutrino interaction. The Point Proposal Network is designed to discover these specific points of interest. The algorithm predicts with a sub-voxel precision their spatial location, and also determines the category of the identified points of interest. Using as a benchmark the PILArNet public LArTPC data sample in which the voxel resolution is 3mm/voxel, our algorithm successfully predicted 96.8% and 97.8% of 3D points within a distance of 3 and 10~voxels from the provided true point locations respectively. For the predicted 3D points within 3 voxels of the closest true point locations, the median distance is found to be 0.25 voxels, achieving the sub-voxel level precision. In addition, we report our analysis of the mistakes where our algorithm prediction differs from the provided true point positions by more than 10~voxels. Among 50 mistakes visually scanned, 25 were due to the definition of true position location, 15 were legitimate mistakes where a physicist cannot visually disagree with the algorithm's prediction, and 10 were genuine mistakes that we wish to improve in the future. Further, using these predicted points, we demonstrate a simple algorithm to cluster 3D voxels into individual track-like particle trajectories with a clustering efficiency, purity, and Adjusted Rand Index of 96%, 93%, and 91% respectively.

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