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Quality Control of the Hidden Construction Works by Means of Photographs Attached to the Certificates of Inspection

https://doi.org/10.23947/2949-1835-2023-2-4-94-103

Abstract

Introduction. Within construction operations the problem of making more trustworthy the information included in the certificates of inspection of hidden works is most often solved by means of photofixation thereof. Based on the previous research results, the authors prove that diagnostic informativeness of the photographs can be used not only to confirm the fact of executing the hidden works in the required scope, but also to get additional information about their quality. To be able to retrieve this information efficiently it is necessary to develop the methodology for controlling quality of the hidden construction works by means of the photographs attached to the certificates of inspection, using advanced scientific achievements in the field of photogrammetry and colour texture analysis of photographic images.

Materials and Methods. The developed quality control methodology of the hidden construction works is based on the use of contour, pixel, macro- and micro-texture analysis of the photographic images. When developing the present methodology, the results of numerous visual examinations of the building structures (including their internal elements’ uncovering) have been used and compared against the information in the certificates of inspection of hidden works.

Results. The article presents the results of the study conducted at Don State Technical University on development of the quality control methodology of the hidden construction works by means of the photographs attached to the certificates of inspection. The algorithms developed by the authors for analysing the photographs of the building structures to control their quality have been presented. The proposals on systematisation and storage of the typical textures of the building structure surfaces have been provided.

Discussion and Conclusion. The foremost condition for successful implementation of the new methodology of the hidden construction works quality control is its methodological support, which determines the unified procedure for photofixation, additional requirements to the combination and parameters of photographs, rules of their registration, storage and use as annexes to the certificates of inspection of hidden works, as well as provides the guidelines for the comprehensive analysis of photographs using the appropriate software.

About the Authors

O. A. Mamonova
Don State Technical University
Russian Federation

Ol'ga A. Mamonova, Cand.Sci. (Engineering), associate professor of the Mathematics and Computer Science Department

1, Gagarin Sq., Rostov-on-Don, 344003



E. A. Zholobova
Don State Technical University
Russian Federation

Elena A. Zholobova, Cand.Sci. (Engineering), associate professor of the Construction Operations Technologies Department

1, Gagarin Sq., Rostov-on-Don, 344003



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Mamonova O.A., Zholobova E.A. Quality Control of the Hidden Construction Works by Means of Photographs Attached to the Certificates of Inspection. Modern Trends in Construction, Urban and Territorial Planning. 2023;2(4):94-103. (In Russ.) https://doi.org/10.23947/2949-1835-2023-2-4-94-103

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