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A deep neural network method for analyzing the CMS High Granularity Calorimeter (HGCAL) events

机译:一种深度神经网络方法,用于分析CMS高粒度量热计(HGCAL)事件

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摘要

For the High Luminosity LHC, the CMS collaboration made the ambitious choice of a high granularity design to replace the existing endcap calorimeters. Thousands of particles coming from the multiple interactions create showers in the calorimeters, depositing energy simultaneously in adjacent cells. The data are similar to 3D gray-scale image that should be properly reconstructed. In this paper, we investigate how to localize and identify the thousands of showers in such events with a Deep Neural Network model. This problem is well-known in the “Vision” domain, it belongs to the challenging class: “Object Detection”. Our project shares a lot of similarities with the ones treated in Industry but faces several technological challenges like the 3D treatment. We present the Mask R-CNN model which has already proven its efficiency in Industry (for 2D images). We also present the first results and our plans to extend it to tackle 3D HGCAL data.
机译:对于高亮度LHC,CMS协作使得雄心勃勃地选择高粒度设计,以取代现有的终端量热计。来自多个相互作用的数千种颗粒在热量计中产生淋浴,在相邻电池中同时沉积能量。数据类似于应该正确重建的3D灰度图像。在本文中,我们调查如何在具有深度神经网络模型中定位和识别此类事件中的数千个淋浴。这个问题在“视觉”域中是众所周知的,它属于具有挑战性的类:“对象检测”。我们的项目与工业治疗的人分享了许多相似之处,而是面临多种技术挑战,如3D治疗。我们介绍了已经证明其在工业效率(适用于2D图像)的面具R-CNN模型。我们还提供了第一个结果,并计划将其扩展以解决3D HGCAL数据。

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