论文标题

可扩展的,无建议的实例分割网络,用于3D像素聚类和粒子轨迹重建的液体氩时间投影室

Scalable, Proposal-free Instance Segmentation Network for 3D Pixel Clustering and Particle Trajectory Reconstruction in Liquid Argon Time Projection Chambers

论文作者

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

论文摘要

液体氩时间投影室(LARTPC)是高分辨率粒子成像探测器,该检测器由基于加速器的中微子振荡实验采用了高精度物理测量。虽然粒子轨迹的图像是直观地分析物理学家的,但是高质量,自动数据重建链的发展仍然具有挑战性。最关键的重建步骤之一是粒子聚类:将3D图像像素分组为具有相同粒子类型的不同粒子实例的任务。在本文中,我们提出了使用稀疏卷积神经网络(SCNN)的第一个可扩展的深度学习算法,用于LARTPC数据中的粒子聚类。在以前的SCNN和提案免费实例分割的作品的基础上,我们构建了一个端到端可训练的实例分割网络,该网络将学习图像像素的嵌入,以在变换的空间中执行点云聚类。我们在公共3D粒子成像数据集PilarNet上基准了算法的性能,就常见的聚类评估指标而言。 3D像素成功聚集在单个粒子轨迹中,其中90%的兰德指数得分大于92%,平均像素聚类效率和纯度高于96%。这项工作有助于开发LARTPC的端到端优化完整数据重建链,特别是基于像素的3D成像检测器,包括深层地下中微子实验的近检测器。我们的算法可在“开放访问存储库”中提供,我们共享我们的奇异软件容器,该容器可用于在数据集上重现我们的工作。

Liquid Argon Time Projection Chambers (LArTPCs) are high resolution particle imaging detectors, employed by accelerator-based neutrino oscillation experiments for high precision physics measurements. While images of particle trajectories are intuitive to analyze for physicists, the development of a high quality, automated data reconstruction chain remains challenging. One of the most critical reconstruction steps is particle clustering: the task of grouping 3D image pixels into different particle instances that share the same particle type. In this paper, we propose the first scalable deep learning algorithm for particle clustering in LArTPC data using sparse convolutional neural networks (SCNN). Building on previous works on SCNNs and proposal free instance segmentation, we build an end-to-end trainable instance segmentation network that learns an embedding of the image pixels to perform point cloud clustering in a transformed space. We benchmark the performance of our algorithm on PILArNet, a public 3D particle imaging dataset, with respect to common clustering evaluation metrics. 3D pixels were successfully clustered into individual particle trajectories with 90% of them having an adjusted Rand index score greater than 92% with a mean pixel clustering efficiency and purity above 96%. This work contributes to the development of an end-to-end optimizable full data reconstruction chain for LArTPCs, in particular pixel-based 3D imaging detectors including the near detector of the Deep Underground Neutrino Experiment. Our algorithm is made available in the open access repository, and we share our Singularity software container, which can be used to reproduce our work on the dataset.

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