Generation of Synthetic Data for a Radiation Detection Algorithm Competition

This work details the generation of synthetic radiation data using large-scale Monte Carlo transport models to evaluate radiation search detection algorithms. Modular 3-D Monte Carlo models spanning multiple city blocks were constructed, loosely based on downtown Knoxville, TN, containing buildings...

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Veröffentlicht in:IEEE transactions on nuclear science 2020-08, Vol.67 (8), p.1968-1975
Hauptverfasser: Nicholson, Andrew D., Peplow, Douglas E., Ghawaly, James M., Willis, Michael J., Archer, Daniel E.
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Sprache:eng
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Zusammenfassung:This work details the generation of synthetic radiation data using large-scale Monte Carlo transport models to evaluate radiation search detection algorithms. Modular 3-D Monte Carlo models spanning multiple city blocks were constructed, loosely based on downtown Knoxville, TN, containing buildings composed of multiple materials (brick, granite, and concrete), sidewalks, a four-lane road, side streets, parking lots, and grassy fields. Background and simulated source detector response calculations from these models were used to create synthetic list mode data sets for a 2\,\,^{\prime \prime } \times 4\,\,^{\prime \prime } \times 16\,\,^{\prime \prime } NaI(Tl) detector moving through a city street at a constant speed. For the background simulations, major isotopes were computed individually so that background composition and variability could be computed efficiently outside Monte Carlo. The source detector response included six simulated sources placed at 15 source locations. Detector response was developed to be periodic through the city street so that a detector path could begin at one end of the model and wrap around to the other. This framework allowed for the creation of diverse data sets, each with its own unique background and simulated source detector response. Synthetic data allows for high-quality labels, which are useful in developing data-driven radiation detection algorithms. This methodology was used to create synthetic data sets which were released as part of a public data competition to spur the development of new radiation detection algorithms for radiological search applications.
ISSN:0018-9499
1558-1578
DOI:10.1109/TNS.2020.3001754