Adaptive building engineering component extraction model based on DSOD

With the purpose to bring up the extraction efficiency and accuracy of building construction image component information, the dense block structure and loss function were proposed to optimize the deep supervised object detection algorithm, and an adaptive building construction component extraction m...

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Main Authors: Na Lv, Xuan Yang
Format: Article
Language:English
Published: Polish Academy of Sciences 2025-06-01
Series:Archives of Civil Engineering
Subjects:
Online Access:https://journals.pan.pl/Content/135374/PDF/22_1k.pdf
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author Na Lv
Xuan Yang
author_facet Na Lv
Xuan Yang
author_sort Na Lv
collection DOAJ
description With the purpose to bring up the extraction efficiency and accuracy of building construction image component information, the dense block structure and loss function were proposed to optimize the deep supervised object detection algorithm, and an adaptive building construction component extraction model based on this algorithm was constructed. The improved depth-supervised target detection algorithm constructed by the study is validated and found to have an accuracy of 87.4% and a precision of 0.84, which is better than other comparative algorithms. The effectiveness of the adaptive extraction model of building components constructed by the research is verified, and it is found that the extraction error of the model is 9.8%, the value of the loss function is 0.2, and the satisfaction score of the experts is 8.8, and its extraction accuracy and efficiency are better than that of the other models, and it can satisfy the demand for the extraction of components of the construction project. In summary, it can be seen that the adaptive extraction model of building components constructed by the research has excellent information extraction performance, not only can it improve the efficiency of extracting engineering components, but it can also significantly enhance the decision support ability in construction management, optimize resource allocation, reduce risks, and improve the management efficiency of engineering projects. It has a positive contribution to the theory and practice of construction management discipline.
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spelling doaj-art-bf7557b05efa40838c5bc1db783bbe412025-08-20T02:07:23ZengPolish Academy of SciencesArchives of Civil Engineering1230-29452025-06-01vol. 71No 2345361https://doi.org/10.24425/ace.2025.154125Adaptive building engineering component extraction model based on DSODNa Lv0https://orcid.org/0009-0002-3097-2313Xuan Yang1https://orcid.org/0009-0004-3235-5663Xinxiang Vocational and Technical College, School of Architecture, Xinxiang, ChinaXinxiang Vocational and Technical College, School of Architecture, Xinxiang, ChinaWith the purpose to bring up the extraction efficiency and accuracy of building construction image component information, the dense block structure and loss function were proposed to optimize the deep supervised object detection algorithm, and an adaptive building construction component extraction model based on this algorithm was constructed. The improved depth-supervised target detection algorithm constructed by the study is validated and found to have an accuracy of 87.4% and a precision of 0.84, which is better than other comparative algorithms. The effectiveness of the adaptive extraction model of building components constructed by the research is verified, and it is found that the extraction error of the model is 9.8%, the value of the loss function is 0.2, and the satisfaction score of the experts is 8.8, and its extraction accuracy and efficiency are better than that of the other models, and it can satisfy the demand for the extraction of components of the construction project. In summary, it can be seen that the adaptive extraction model of building components constructed by the research has excellent information extraction performance, not only can it improve the efficiency of extracting engineering components, but it can also significantly enhance the decision support ability in construction management, optimize resource allocation, reduce risks, and improve the management efficiency of engineering projects. It has a positive contribution to the theory and practice of construction management discipline.https://journals.pan.pl/Content/135374/PDF/22_1k.pdfadaptivebuild extractionconstruction engineeringdeeply supervised target detection
spellingShingle Na Lv
Xuan Yang
Adaptive building engineering component extraction model based on DSOD
Archives of Civil Engineering
adaptive
build extraction
construction engineering
deeply supervised target detection
title Adaptive building engineering component extraction model based on DSOD
title_full Adaptive building engineering component extraction model based on DSOD
title_fullStr Adaptive building engineering component extraction model based on DSOD
title_full_unstemmed Adaptive building engineering component extraction model based on DSOD
title_short Adaptive building engineering component extraction model based on DSOD
title_sort adaptive building engineering component extraction model based on dsod
topic adaptive
build extraction
construction engineering
deeply supervised target detection
url https://journals.pan.pl/Content/135374/PDF/22_1k.pdf
work_keys_str_mv AT nalv adaptivebuildingengineeringcomponentextractionmodelbasedondsod
AT xuanyang adaptivebuildingengineeringcomponentextractionmodelbasedondsod