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Interest Point Detection for Reconstruction in High Granularity Tracking Detectors

Journal of instrumentation(2010)

Univ Warwick

Cited 6|Views12
Abstract
This paper presents an investigation of the use of interest point detection algorithms from image processing applied to reconstruction of interactions in high granularity tracking detectors. Their purpose is to extract keypoints from the data as input to higher level reconstruction algorithms, replacing the role of human operators in event selection and reconstruction guidance. Simulations of nu(mu) + (40)Ar -> mu(-) + p events with a nu(mu) energy of 0.7GeV in a small liquid argon time projection chamber are used as a concrete example of a modern high granularity tracking detector. Data from the simulations are used to characterize the localization of interest points to physical features and the efficiency of finding interest points associated with the primary vertex and track ends is measured at the chosen beam energy. A high degree of localization is found, with 93% of detected interest points found within 5mm of a physical feature at the simulated energy of 0.7GeV. Working in two 2D projections, the primary vertex and both track ends are found in both projections in 85% of events at 0.7GeV. It is also shown that delta electrons can be detected.
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Image filtering,Data processing methods,Pattern recognition, cluster finding, calibration and fitting methods
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要点】:本文探讨了将图像处理中的兴趣点检测算法应用于高粒度跟踪探测器中的相互作用重建,以提高重建效率和准确性。

方法】:研究使用兴趣点检测算法从数据中提取关键点,作为高级重建算法的输入,取代人工操作员在事件选择和重建指导中的作用。

实验】:通过模拟nu(mu) + (40)Ar -> mu(-) + p事件(ν(μ)能量为0.7GeV)在一个小型液态氩时间投影室中的数据,研究兴趣点的定位效果及其与初级顶点和轨道端点的关联效率。结果显示,93%的检测兴趣点在0.7GeV的模拟能量下位于物理特征5mm范围内,且在两个2D投影中,初级顶点和两个轨道端点在85%的事件中均被找到。此外,还证明了能够检测到δ电子。数据集名称未提及。