Semantic 3D Reconstruction for Volumetric Modeling of Defects in Construction Sites

Robotics Pub Date : 2024-07-11 DOI:10.3390/robotics13070102
Dimitrios Katsatos, P. Charalampous, Patrick Schmidt, Ioannis Kostavelis, Dimitrios Giakoumis, Lazaros Nalpantidis, Dimitrios Tzovaras
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Abstract

The appearance of construction defects in buildings can arise from a variety of factors, ranging from issues during the design and construction phases to problems that develop over time with the lifecycle of a building. These defects require repairs, often in the context of a significant shortage of skilled labor. In addition, such work is often physically demanding and carried out in hazardous environments. Consequently, adopting autonomous robotic systems in the construction industry becomes essential, as they can relieve labor shortages, promote safety, and enhance the quality and efficiency of repair and maintenance tasks. Hereupon, the present study introduces an end-to-end framework towards the automation of shotcreting tasks in cases where construction or repair actions are required. The proposed system can scan a construction scene using a stereo-vision camera mounted on a robotic platform, identify regions of defects, and reconstruct a 3D model of these areas. Furthermore, it automatically calculates the required 3D volumes to be constructed to treat a detected defect. To achieve all of the above-mentioned technological tools, the developed software framework employs semantic segmentation and 3D reconstruction modules based on YOLOv8m-seg, SiamMask, InfiniTAM, and RTAB-Map, respectively. In addition, the segmented 3D regions are processed by the volumetric modeling component, which determines the amount of concrete needed to fill the defects. It generates the exact 3D model that can repair the investigated defect. Finally, the precision and effectiveness of the proposed pipeline are evaluated in actual construction site scenarios, featuring reinforcement bars as defective areas.
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用于建筑工地缺陷体积建模的语义 3D 重建技术
建筑物出现建筑缺陷的原因多种多样,既有设计和施工阶段的问题,也有随着建筑物生命周期的推移而产生的问题。这些缺陷需要维修,通常是在熟练劳动力严重短缺的情况下进行的。此外,这类工作往往需要大量体力,而且是在危险的环境中进行。因此,在建筑行业采用自主机器人系统变得至关重要,因为它们可以缓解劳动力短缺问题,促进安全,并提高维修和维护任务的质量和效率。因此,本研究介绍了一种端到端框架,用于在需要进行施工或维修的情况下实现滚筒任务的自动化。拟议的系统可使用安装在机器人平台上的立体视觉相机扫描施工场景,识别缺陷区域,并重建这些区域的三维模型。此外,该系统还能自动计算处理检测到的缺陷所需的 3D 体积。为了实现上述所有技术手段,开发的软件框架采用了分别基于 YOLOv8m-seg、SiamMask、InfiniTAM 和 RTAB-Map 的语义分割和三维重建模块。此外,体积建模组件会对分割后的三维区域进行处理,以确定填补缺陷所需的混凝土量。它生成的精确三维模型可以修复所调查的缺陷。最后,在以钢筋为缺陷区域的实际施工现场场景中,对拟议管道的精度和有效性进行了评估。
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