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The use of homomorphic image processing to analyze coke grading
Authors
A. L. Gapak
A. G. Gruh
I. Khurelchuluun
V. N. Krouglov
Publication date
1 January 2020
Publisher
'IOP Publishing'
Doi
Abstract
The estimation of the geometrical sizes of particles of crushed solid fuel (coke), moving on the conveyor belt, is associated with a number of technical difficulties. One of the problems is the need for a non-invasive way of determining particle geometry. A promising way to solve it is to use devices based on machine vision systems. This paper describes the algorithmic part of the prototype of such a device. It is proposed to improve the quality of boundary detection between fragments of coke particles to perform homomorphic processing of the initial low-contrast video images. The algorithm for calculating the Fourier spectrum has been optimized based on the Fast Fourier Transform (FFT) with the mixed base. As a result, it becomes possible to reduce the computational cost for calculating two-dimensional Fourier spectra for complex multiplication operations by 1.33 times, and the number of complex addition operations by 1.67 times. The software of the prototype, built using the proposed methods, made it possible to obtain good convergence of the results for assessing the particle size distribution of samples of crushed coke with laboratory estimates. Thus, the maximum absolute average error of the machine vision system in assessing the size of crushed coke is only 3.37%, and the maximum error for all measurement classes do not exceed 6.9%. © Published under licence by IOP Publishing Ltd
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Institutional repository of Ural Federal University named after the first President of Russia B.N.Yeltsin
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oai:elar.urfu.ru:10995/94253
Last time updated on 03/03/2021
Institutional repository of Ural Federal University named after the first President of Russia B.N.Yeltsin
See this paper in CORE
Go to the repository landing page
Download from data provider
oai:elar.urfu.ru:10995/118309
Last time updated on 24/10/2022