Object classification using X-ray images

The main aim of the presented research was to assess the possibility of utilizing geometric features in object classification. Studies were conducted using X-ray images of kernels belonging to three different wheat varieties: Kama, Canadian and Rosa. As a part of the work, image processing methods...

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Main Authors: Piotr Nowosad, Małgorzata Charytanowicz
Format: Article
Language:English
Published: Lublin University of Technology 2020-06-01
Series:Journal of Computer Sciences Institute
Subjects:
Online Access:https://ph.pollub.pl/index.php/jcsi/article/view/1720
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spelling doaj-f8877c061c9641c1a62f42308f6cd9392020-11-25T04:08:20ZengLublin University of TechnologyJournal of Computer Sciences Institute2544-07642020-06-011510.35784/jcsi.1720Object classification using X-ray imagesPiotr Nowosad0Małgorzata Charytanowicz1{'en_US': ' '}Lublin University of Technology The main aim of the presented research was to assess the possibility of utilizing geometric features in object classification. Studies were conducted using X-ray images of kernels belonging to three different wheat varieties: Kama, Canadian and Rosa. As a part of the work, image processing methods were used to determine the main geometric grain parameters, including the kernel area, kernel perimeter, kernel length and kernel width. The results indicate significant differences between wheat varieties, and demonstrates the importance of their size and shape parameters in the classification process. The percentage of correctness of classification was about 92% when the k-Means algorithm was used. A classification rate of 93% was obtain using the K-Nearest Neighbour and Support Vector Machines. Herein, the Rosa variety was better recognized, whilst the Canadian and Kama varieties were less successfully differentiated. https://ph.pollub.pl/index.php/jcsi/article/view/1720object classificationgeometric featuresimage processingX-ray imaging
collection DOAJ
language English
format Article
sources DOAJ
author Piotr Nowosad
Małgorzata Charytanowicz
spellingShingle Piotr Nowosad
Małgorzata Charytanowicz
Object classification using X-ray images
Journal of Computer Sciences Institute
object classification
geometric features
image processing
X-ray imaging
author_facet Piotr Nowosad
Małgorzata Charytanowicz
author_sort Piotr Nowosad
title Object classification using X-ray images
title_short Object classification using X-ray images
title_full Object classification using X-ray images
title_fullStr Object classification using X-ray images
title_full_unstemmed Object classification using X-ray images
title_sort object classification using x-ray images
publisher Lublin University of Technology
series Journal of Computer Sciences Institute
issn 2544-0764
publishDate 2020-06-01
description The main aim of the presented research was to assess the possibility of utilizing geometric features in object classification. Studies were conducted using X-ray images of kernels belonging to three different wheat varieties: Kama, Canadian and Rosa. As a part of the work, image processing methods were used to determine the main geometric grain parameters, including the kernel area, kernel perimeter, kernel length and kernel width. The results indicate significant differences between wheat varieties, and demonstrates the importance of their size and shape parameters in the classification process. The percentage of correctness of classification was about 92% when the k-Means algorithm was used. A classification rate of 93% was obtain using the K-Nearest Neighbour and Support Vector Machines. Herein, the Rosa variety was better recognized, whilst the Canadian and Kama varieties were less successfully differentiated.
topic object classification
geometric features
image processing
X-ray imaging
url https://ph.pollub.pl/index.php/jcsi/article/view/1720
work_keys_str_mv AT piotrnowosad objectclassificationusingxrayimages
AT małgorzatacharytanowicz objectclassificationusingxrayimages
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