Neuro-explicit semantic segmentation of the diffusion cloud chamber

Author:

Müller Nicola J.12ORCID,Porawski Daniel1ORCID,Wilde Lukas1ORCID,Fink Dennis3ORCID,Trap Guillaume34ORCID,Engel Annika2ORCID,Schmartz Georges P.2ORCID

Affiliation:

1. Bachelor’s Program Data Science and Artificial Intelligence, Saarland University 1 , Saarbrücken 66123, Germany

2. Chair for Clinical Bioinformatics, Saarland University 2 , Saarbrücken 66123, Germany

3. Luxembourg Science Center 3 , Differdange 4573, Luxembourg

4. Foundation Jeunes Scientifiques Luxembourg 4 , 40 Boulevard Pierre Dupong, L-1430 Luxembourg

Abstract

For decades, in diffusion cloud chambers, different types of subatomic particle tracks from radioactive sources or cosmic radiation had to be identified with the naked eye which limited the amount of data that could be processed. In order to allow these classical particle detectors to enter the digital era, we successfully developed a neuro-explicit artificial intelligence model that, given an image from the cloud chamber, automatically annotates most of the particle tracks visible in the image according to the type of particle or process that created it. To achieve this goal, we combined the attention U-Net neural network architecture with methods that model the shape of the detected particle tracks. Our experiments show that the model effectively detects particle tracks and that the neuro-explicit approach decreases the misclassification rate of rare particles by 73% compared with solely using the attention U-Net.

Funder

Deutsche Forschungsgemeinschaft

Publisher

AIP Publishing

Subject

Instrumentation

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