Literature DB >> 34300544

CNN-Based Classifier as an Offline Trigger for the CREDO Experiment.

Marcin Piekarczyk1, Olaf Bar1, Łukasz Bibrzycki1, Michał Niedźwiecki2, Krzysztof Rzecki3, Sławomir Stuglik4, Thomas Andersen5, Nikolay M Budnev6, David E Alvarez-Castillo4,7, Kévin Almeida Cheminant4, Dariusz Góra4, Alok C Gupta8, Bohdan Hnatyk9, Piotr Homola4, Robert Kamiński4, Marcin Kasztelan10, Marek Knap11, Péter Kovács12, Bartosz Łozowski13, Justyna Miszczyk4, Alona Mozgova9, Vahab Nazari14, Maciej Pawlik3, Matías Rosas15, Oleksandr Sushchov4, Katarzyna Smelcerz2, Karel Smolek16, Jarosław Stasielak4, Tadeusz Wibig17, Krzysztof W Woźniak4, Jilberto Zamora-Saa18.   

Abstract

Gamification is known to enhance users' participation in education and research projects that follow the citizen science paradigm. The Cosmic Ray Extremely Distributed Observatory (CREDO) experiment is designed for the large-scale study of various radiation forms that continuously reach the Earth from space, collectively known as cosmic rays. The CREDO Detector app relies on a network of involved users and is now working worldwide across phones and other CMOS sensor-equipped devices. To broaden the user base and activate current users, CREDO extensively uses the gamification solutions like the periodical Particle Hunters Competition. However, the adverse effect of gamification is that the number of artefacts, i.e., signals unrelated to cosmic ray detection or openly related to cheating, substantially increases. To tag the artefacts appearing in the CREDO database we propose the method based on machine learning. The approach involves training the Convolutional Neural Network (CNN) to recognise the morphological difference between signals and artefacts. As a result we obtain the CNN-based trigger which is able to mimic the signal vs. artefact assignments of human annotators as closely as possible. To enhance the method, the input image signal is adaptively thresholded and then transformed using Daubechies wavelets. In this exploratory study, we use wavelet transforms to amplify distinctive image features. As a result, we obtain a very good recognition ratio of almost 99% for both signal and artefacts. The proposed solution allows eliminating the manual supervision of the competition process.

Entities:  

Keywords:  CREDO; citizen science; convolutional neural networks; deep learning; gamification; global sensor network; image classification; image sensors

Year:  2021        PMID: 34300544     DOI: 10.3390/s21144804

Source DB:  PubMed          Journal:  Sensors (Basel)        ISSN: 1424-8220            Impact factor:   3.576


  1 in total

1.  Application of Wigner Distribution Function for THz Propagation Analysis.

Authors:  Michael Gerasimov; Egor Dyunin; Jacob Gerasimov; Johnathan Ciplis; Aharon Friedman
Journal:  Sensors (Basel)       Date:  2021-12-29       Impact factor: 3.576

  1 in total

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