Author
Listed:
- Ryotaro Okabe
(Massachusetts Institute of Technology
Massachusetts Institute of Technology)
- Shangjie Xue
(Massachusetts Institute of Technology
Massachusetts Institute of Technology
Massachusetts Institute of Technology)
- Jayson R. Vavrek
(Lawrence Berkeley National Laboratory)
- Jiankai Yu
(Massachusetts Institute of Technology)
- Ryan Pavlovsky
(Lawrence Berkeley National Laboratory)
- Victor Negut
(Lawrence Berkeley National Laboratory)
- Brian J. Quiter
(Lawrence Berkeley National Laboratory)
- Joshua W. Cates
(Lawrence Berkeley National Laboratory)
- Tongtong Liu
(Massachusetts Institute of Technology
Massachusetts Institute of Technology)
- Benoit Forget
(Massachusetts Institute of Technology)
- Stefanie Jegelka
(Massachusetts Institute of Technology)
- Gordon Kohse
(Massachusetts Institute of Technology)
- Lin-wen Hu
(Massachusetts Institute of Technology)
- Mingda Li
(Massachusetts Institute of Technology
Massachusetts Institute of Technology)
Abstract
Radiation mapping has attracted widespread research attention and increased public concerns on environmental monitoring. Regarding materials and their configurations, radiation detectors have been developed to identify the position and strength of the radioactive sources. However, due to the complex mechanisms of radiation-matter interaction and data limitation, high-performance and low-cost radiation mapping is still challenging. Here, we present a radiation mapping framework using Tetris-inspired detector pixels. Applying inter-pixel padding for enhancing contrast between pixels and neural networks trained with Monte Carlo (MC) simulation data, a detector with as few as four pixels can achieve high-resolution directional prediction. A moving detector with Maximum a Posteriori (MAP) further achieved radiation position localization. Field testing with a simple detector has verified the capability of the MAP method for source localization. Our framework offers an avenue for high-quality radiation mapping with simple detector configurations and is anticipated to be deployed for real-world radiation detection.
Suggested Citation
Ryotaro Okabe & Shangjie Xue & Jayson R. Vavrek & Jiankai Yu & Ryan Pavlovsky & Victor Negut & Brian J. Quiter & Joshua W. Cates & Tongtong Liu & Benoit Forget & Stefanie Jegelka & Gordon Kohse & Lin-, 2024.
"Tetris-inspired detector with neural network for radiation mapping,"
Nature Communications, Nature, vol. 15(1), pages 1-13, December.
Handle:
RePEc:nat:natcom:v:15:y:2024:i:1:d:10.1038_s41467-024-47338-w
DOI: 10.1038/s41467-024-47338-w
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