4.6 Article

Transfer Learning-Based Object Detection Model for Steel Structure Bolt Fastening Inspection

期刊

APPLIED SCIENCES-BASEL
卷 13, 期 17, 页码 -

出版社

MDPI
DOI: 10.3390/app13179499

关键词

construction inspection; computer vision; deep learning; object detection

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Construction inspection is crucial for project success as it affects project costs and quality, and computer vision can revolutionize this process by offering more efficient ways to monitor construction progress and quality. However, the success of vision-based site monitoring relies heavily on training data. To address the challenges of data collection at construction sites, this study developed models using transfer learning-based object detection models with data augmentation and transfer learning. The proposed inspection model improves performance despite limited training data, enhancing the efficiency of quality control and inspector safety in building construction projects.
As improper inspection of construction works can cause an increase in project costs and a decrease in project quality, construction inspection is considered a critical factor for project success. While traditional inspection tasks are still mainly labor-intensive and time-consuming, computer vision has the potential to revolutionize the construction inspection process by providing more efficient and effective ways to monitor the progress and quality of construction projects. However, previous studies have also indicated that the performance of vision-based site monitoring heavily relies on the volume of training data. To address the issues of challenging data collection at construction sites, this study developed models using transfer learning-based object detection models incorporating data augmentation and transfer learning. The performance of three object detection algorithms was compared based on average precision and inference time for detecting T/S bolt fastening of steel structure. Despite the limited training data available, the model's performance was improved through data augmentation and transfer learning. The proposed inspection model can increase the efficiency of quality control works for building construction projects and the safety of inspectors.

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