1. bookVolume 18 (2018): Issue 4 (August 2018)
Journal Details
License
Format
Journal
eISSN
1335-8871
First Published
07 Mar 2008
Publication timeframe
6 times per year
Languages
English
Open Access

Measuring and evaluating the differences of compared images for a correct car silhouette categorization using integral transforms

Published Online: 14 Aug 2018
Volume & Issue: Volume 18 (2018) - Issue 4 (August 2018)
Page range: 168 - 174
Received: 17 Apr 2018
Accepted: 18 Jul 2018
Journal Details
License
Format
Journal
eISSN
1335-8871
First Published
07 Mar 2008
Publication timeframe
6 times per year
Languages
English
Abstract

The present paper focuses on the analysis of the possibilities of using integral transforms for measuring and evaluating the differences of compared images (car silhouettes) with the purpose of a correct car body categorization. Approaches such as the light intensities frequency change, the application of discrete integral transforms without the use of further supplementary information enabling automated data processing using the Fourier-Mellin transforms are used within this work. The calculation of the several metrics was verified through different combinations that implied using and not using the Hamming window and a low-pass filter. The paper introduced a method for measuring and evaluating the differences in the compared images (car silhouettes). The proposed method relies on the fact that the integral transforms have their own transformants in the case of translation, scaling and rotation, in the frequency area. Besides, the Fourier-Mellin transform was to offer image transformation that is resistant to the translation, rotation and scale.

Keywords

[1] Stylidis, K., Wickman, C., Söderberg, R. (2015). Defining perceived quality in the automotive industry: An engineering approach. Procedia CIRP, 36 (2015), 165-170.Search in Google Scholar

[2] Bogue, R. (2013). Robotic vision boosts automotive industry quality and productivity. Industrial Robot: An International Journal, 40 (5), 415-419.10.1108/IR-04-2013-342Search in Google Scholar

[3] Di Leo, G., Liguori, C., Pietrosanto, A., Sommella, P. (2017). A vision system for the online quality monitoring of industrial manufacturing. Optics and Lasers in Engineering, 89, 162-168.10.1016/j.optlaseng.2016.05.007Search in Google Scholar

[4] Ružarovský, R., Delgado Sobrino, D.R., Holubek, R., Košťál, P. (2014). Automated in-process inspection method in the flexible production system iCIM 3000. Applied Mechanics and Materials, 693, 50-55.10.4028/www.scientific.net/AMM.693.50Search in Google Scholar

[5] Božek, P., Pivarčiová, E. (2013). Flexible manufacturing system with automatic control of product quality. Strojarstvo, 55 (3), 211-221.Search in Google Scholar

[6] Mery, D., Jaeger, T., Filbert, D. (2002). A review of methods for automated recognition of casting defects. http://www.academia.edu/20111824/A_review_of_methods_for_automated_recognition_of_casting_defects.Search in Google Scholar

[7] Świłło, S.J., Perzyk, M. (2013). Surface casting defects inspection using vision system and neural network techniques. Archives of Foundry Engineering, 13 (4).10.2478/afe-2013-0091Search in Google Scholar

[8] Dhillon, B.S. (2009). Human Reliability, Error, and Human Factors in Engineering Maintenance. CRC Press.10.1201/9781439803844Search in Google Scholar

[9] Huang, S.-H., Pan, Y-Ch. (2015). Automated visual inspection in the semiconductor industry: A survey. Computers in Industry, 66, 1-10.10.1016/j.compind.2014.10.006Search in Google Scholar

[10] Frankovský, P., Ostertag, O., Trebuňa, F., Ostertagová, E., Kelemen, M. (2016). Methodology of contact stress analysis of gearwheel by means of experimental photoelasticity. Applied Optics, 55 (18), 4856-4864.10.1364/AO.55.00485627409110Search in Google Scholar

[11] Kováč, J., Ďurovský, F., Hajduk, M. (2014). Utilization of virtual reality connected with robotized system. Applied Mechanics and Materials, 613, 273-278.10.4028/www.scientific.net/AMM.613.273Search in Google Scholar

[12] Frankovský, P., Hroncová, D., Delyová, I., Hudák, P. (2012). Inverse and forward dynamic analysis of two link manipulator. Procedia Engineering, 48, 158-163.10.1016/j.proeng.2012.09.500Search in Google Scholar

[13] Abramov, I.V., Nikitin, Yu.R., Abramov, A.I., Sosnovich, E.V., Božek, P. (2014). Control and diagnostic model of brushless DC motor. Journal of Electrical Engineering, 65 (5), 277- 282.10.2478/jee-2014-0044Search in Google Scholar

[14] Jena, D.B., Kuma, R. (2011). Implementation of wavelet denoising and image morphology on welding image for estimating HAZ and welding defect. Measurement Science Review, 11, (4).10.2478/v10048-011-0020-3Search in Google Scholar

[15] Neogi, N. Mohanta, K.D., Dutta, K.P. (2014). Review of vision-based steel surface inspection systems. EURASIP Journal on Image and Video Processing, 2014 (50).10.1186/1687-5281-2014-50Search in Google Scholar

[16] Ito, K., Nakajima, H., Kobayashi, K., Aoki, T., Higuchi, T. (2004). A fingerprint matching algorithm using Phase-Only Correlation. IEICE Transactions on Fundamentals of Electronics, Communications and Computer Sciences, E87-A (3), 682-691.Search in Google Scholar

[17] Carl Zeiss Ltd. (2018). 3D inline measuring technology from ZEISS. https://www.zeiss.co.uk.Search in Google Scholar

[18] Druckmüller, M., Antoš, M., Druckmüllerová, H. (2005). Mathematical methods for visualization of the solar corona. Jemná mechanika a optika, 10, 302-304.Search in Google Scholar

[19] van den Dool, R. (2004). Fourier and Mellin Transform. Image Processing Tools. www.scribd.com/doc/9480198/Tools-Fourier-Mellin-Transform.Search in Google Scholar

[20] Derrode, S., Ghorbel, F. (2001). Robust and efficient Fourier-Mellin transform approximations for graylevel image reconstruction and complete invariant description. Computer Vision and Image Understanding, 83 (1), 57-78.10.1006/cviu.2001.0922Search in Google Scholar

[21] Gueham, M., Bouridane, A., Crookes, D. (2007). Automatic recognition of partial shoeprints based on phase-only correlation. In IEEE International Conference on Image Processing. IEEE, Vol. 4, 441-444.Search in Google Scholar

[22] Chen, Q.S. (1993). Image registration and its applications in medical imaging. Dissertation work, Vrije University, Brussels, Belgium.Search in Google Scholar

[23] Slížik, J., Harťanský, R. (2012). Metrology of electromagnetic intensity measurement in near field. Quality Innovation Prosperity, 17 (1), 57-66.Search in Google Scholar

[24] Hallon, J., Kováč, K., Bittera, M. (2018). Comparison of coupling networks for EFT Pulses Injection. Przeglad elektrotechniczny, 94 (2), 17-20.10.15199/48.2018.02.05Search in Google Scholar

[25] Harťanský, R., Smieško, V., Rafaj, M. (2017). Modifying and accelerating the method of moments calculation. Computing and Informatics, 36 (3), 664-682.10.4149/cai_2017_3_664Search in Google Scholar

Recommended articles from Trend MD

Plan your remote conference with Sciendo