J 2021

Zernike moment based classification of cosmic ray candidate hits from cmos sensors

BAR, O., Ł. BIBRZYCKI, M. NIEDŹWIECKI, M. PIEKARCZYK, K. RZECKI et. al.

Basic information

Original name

Zernike moment based classification of cosmic ray candidate hits from cmos sensors

Authors

BAR, O., Ł. BIBRZYCKI, M. NIEDŹWIECKI, M. PIEKARCZYK, K. RZECKI, T. SOŚNICKI, S. STUGLIK, M. FRONTCZAK, P. HOMOLA, D.E. ALVAREZ-CASTILLO, T. ANDERSEN and Arman TURSUNOV (860 Uzbekistan, belonging to the institution)

Edition

Sensors, Switzerland, 2021, 1424-3210

Other information

Language

English

Type of outcome

Článek v odborném periodiku

Field of Study

10308 Astronomy

Country of publisher

Switzerland

Confidentiality degree

není předmětem státního či obchodního tajemství

References:

URL

RIV identification code

RIV/47813059:19630/21:A0000153

Organization unit

Institute of physics in Opava

DOI

http://dx.doi.org/10.3390/s21227718

Keywords in English

CMOS sensors; feature-based classification; Zernike moments; machine learning; computer vision

Tags

2022, , RIV22
Změněno: 21/2/2022 15:36, Mgr. Pavlína Jalůvková

Abstract

V originále

Reliable tools for artefact rejection and signal classification are a must for cosmic ray detection experiments based on CMOS technology. In this paper, we analyse the fitness of several feature-based statistical classifiers for the classification of particle candidate hits in four categories: spots, tracks, worms and artefacts. We use Zernike moments of the image function as feature carriers and propose a preprocessing and denoising scheme to make the feature extraction more efficient. As opposed to convolution neural network classifiers, the feature-based classifiers allow for establishing a connection between features and geometrical properties of candidate hits. Apart from basic classifiers we also consider their ensemble extensions and find these extensions generally better performing than basic versions, with an average recognition accuracy of 88%.
Displayed: 25/12/2024 17:35