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Developing the measuring system for controlling the mechanical engineering objects while in operation with the use of computer vision systems

Authors: Stukalova A.D.
Published in issue: #10(27)/2018
DOI: 10.18698/2541-8009-2018-10-387


Category: Instrument Engineering, Metrology, Information-Measuring Instruments and Systems | Chapter: Instruments and Measuring Methods

Keywords: computer vision, brightness-geometric characteristic of the image, morphological analysis, the product surface, non-destructive control, shaft, video camera, surface defects
Published: 16.10.2018

The article considers the issue of creating a control measuring system that allows analyzing the surface condition of the engineering industry products. We touch on the problems typical for the analysis of the objects’ surface condition in real-time mode. The work provides the mathematical treatment, through the use of which it is possible to analyze visual information transmitted to the computer from video camera. The authors introduce a system that allows making complex conclusion regarding the object’s surface condition, starting from the surface analysis, finding possible defect and finishing with estimating the nature of the imperfections region and deciding whether the detected imperfection is a defect or not. We present a model of the possible system of controlling the investigated object’s surface by means of stroboscope and video camera.


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