A Deep Residual Network Designed for Detecting Cracks in Buildings of Historical Significance
Makhanova Z. Beissenova G. Madiyarova A. Chazhabayeva M. Mambetaliyeva G. Suimenova M. Shaimerdenova G. Mussirepova E. Baiburin A.
2024Science and Information Organization
International Journal of Advanced Computer Science and Applications
2024#15Issue 5583 - 592 pp.
This research paper investigates the application of deep learning techniques, specifically convolutional neural networks (CNNs), for crack detection in historical buildings. The study addresses the pressing need for non-invasive and efficient methods of assessing structural integrity in heritage conservation. Leveraging a dataset comprising images of historical building surfaces, the proposed CNN model demonstrates high accuracy and precision in identifying surface cracks. Through the integration of convolutional and fully connected layers, the model effectively distinguishes between positive and negative instances of cracks, facilitating automated detection processes. Visual representations of crack finding cases in ancient buildings validate the models efficacy in real-world applications, offering tangible evidence of its capability to detect structural anomalies. While the study highlights the potential of deep learning algorithms in heritage preservation efforts, it also acknowledges challenges such as model generalization, computational complexity, and interpretability. Future research endeavors should focus on addressing these challenges and exploring new avenues for innovation to enhance the reliability and accessibility of crack detection technologies in cultural heritage conservation. Ultimately, this research contributes to the development of sustainable solutions for safeguarding architectural heritage, ensuring its preservation for future generations.
convolutional neural networks , Crack detection , deep learning , heritage conservation , historical buildings , image analysis , machine learning , non-destructive testing , preservation
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M.Auezov South Kazakhstan University, Shymkent, Kazakhstan
Caspian University of Technology and Engineering Named after Sh.Yessenov, Aktay, Kazakhstan
Astana IT University, Astana, Kazakhstan
M.Auezov South Kazakhstan University
Caspian University of Technology and Engineering Named after Sh.Yessenov
Astana IT University
10 лет помогаем публиковать статьи Международный издатель
Книга Публикация научной статьи Волощук 2026 Book Publication of a scientific article 2026