Журнал Российского общества по неразрушающему контролю и технической диагностике
The journal of the Russian society for non-destructive testing and technical diagnostic
 
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23 | 12 | 2024
2017, 11 November

DOI: 10.14489/td.2017.11.pp.004-011

 

Makhov V. E., Potapov A. I., Shaldaev S. E.
INVESTIGATION OF THE BORDER LIMITS BY THE METHOD OF DISTRIBUTION OF CONTRAST WITH USING THE OPTICAL-ELECTRONIC SYSTEM. PART 2
(pp. 4-11)

Abstract. Background. Optoelectronic systems recording the image of a controlled object are widely used in automated control systems for linear dimensions and product shapes in industry. In practice, under production conditions, it is not always possible to provide sufficient conditions for high-precision measurements, which reduces the efficiency of technological processes. The actual task is the development of measuring tools and algorithms that operate in a wide range of conditions change while monitoring industrial products and process equipment. Materials and/or methods. An algorithmic method of imaging contrast curves of its borders is previously used for measurement information form of products fragments. The method of scanning the profile line in the images of the contrast curves was used to measure the surface shape of product. The method for analyzing the curves of the coefficients of continuous wavelet transform (CWT) is used in the calculation of the image functions boundaries. Mathematical models of the shadow image of controlled of products and virtual instrument (VI) based on the computer technology company National Instruments (NI) is used to research the accuracy of measurements. Results. The method of analysis curve luminance distribution CWT coefficients vertically scanned lines the profile curves image borders contrast allows for more than twice to increase the accuracy of determining the geometric shapes sizes of products in the shadow image. At oblique scanning line profile, including perpendicular to the tangent to the surface of the measurement accuracy increases by 5 times. The horizontal scan line profile allows to determine the coordinate of the jump or fracture shape of the surface to an accuracy of 0.1 pixel. Additional scanning angle of the profile line at each point of measurement eliminates the effect of pixilation and local image defects. Conclusion. Model experiments have shown that the use of CWT algorithms in sections contrast curves can achieve the accuracy of measuring the profile of controlled goods 0.1 pixels. At the same time proved the possibility of determining the coordinates of the jump and fracture the boundaries of the image with an accuracy of 0.1 pixels. The main areas of application of high-precision measurements of geometric forms a shadow image with unilateral or partial access to the measured object.

Keywords: video monitoring system, optoelectronic system, the boundary of the shadow image, continuous wavelet transform (CWT), curves CWT coefficients.

 

V. E. Makhov (Saint-Petersburg Mining University, Mozhaisky Military Space Academy, St. Petersburg, Russia)
A. I. Potapov (Saint-Petersburg Mining University, St. Petersburg, Russia)
S. E. Shaldaev (Mozhaisky Military Space Academy, St. Petersburg, Russia)

 

 

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