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arXiv 提交日期: 2026-04-04
📄 Abstract - Shower-Aware Dual-Stream Voxel Networks for Structural Defect Detection in Cosmic-Ray Muon Tomography

We present SA-DSVN, a 3D convolutional architecture for voxel-level segmentation of structural defects in reinforced concrete using cosmic-ray muon tomography. Unlike conventional reconstruction methods (POCA, MLSD) that rely solely on muon scattering angles, our approach jointly processes scattering kinematics (9 channels) and secondary electromagnetic shower multiplicities (40 channels) through independent encoder streams fused via cross-attention. Training data were generated using Vega, a cloud-native Geant4 simulation framework, producing 4.5 million muon events across 900 volumes containing four defect types - honeycombing, shear fracture, corrosion voids, and delamination - embedded within a dense 7x7 rebar cage. A five-variant ablation study demonstrates that the shower multiplicity stream alone accounts for the majority of discriminative power, raising defect-mean Dice from 0.535 (scattering only) to 0.685 (shower only). On 60 independently simulated validation volumes, the model achieves 96.3% voxel accuracy, per-defect Dice scores of 0.59-0.81, and 100% volume-level detection sensitivity at 10 ms inference per volume. These results establish secondary shower multiplicity as a previously unexploited but highly effective feature for learned muon tomographic reconstruction.

顶级标签: computer vision systems model evaluation
详细标签: muon tomography 3d segmentation defect detection voxel networks geant4 simulation 或 搜索:

用于宇宙射线μ子断层扫描结构缺陷检测的簇射感知双流体素网络 / Shower-Aware Dual-Stream Voxel Networks for Structural Defect Detection in Cosmic-Ray Muon Tomography


1️⃣ 一句话总结

这篇论文提出了一种名为SA-DSVN的新3D卷积神经网络,它通过同时分析宇宙射线μ子的散射角度和其产生的次级电磁簇射数量,显著提升了在钢筋混凝土内部(如蜂窝、腐蚀空洞等)进行三维缺陷检测的精度和速度。

源自 arXiv: 2604.03741