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视觉与机器人

机器人 / 具身智能

机器人、具身智能、机器人学习、操作、导航和具身世界模型。

今日/当前日期收录 1 信号源:cs.RO, cs.AI, cs.CV, cs.LG
2509.13972 2026-06-19 cs.RO 版本更新 70%

BIM Informed Visual SLAM for Construction Environments

BIM 引导的视觉 SLAM 在建筑环境中的应用

Asier Bikandi-Noya, Miguel Fernandez-Cortizas, Muhammad Shaheer, Ali Tourani, Holger Voos, Jose Luis Sanchez-Lopez

发表机构 * Automation and Robotics Research Group, Interdisciplinary Centre for Security, Reliability, and Trust (SnT), University of Luxembourg(自动化与机器人研究组,安全、可靠与信任跨学科研究中心(SnT),卢森堡大学)

专题命中 具身导航 :SLAM用于建筑环境机器人定位与建图

AI总结 针对建筑环境中视觉SLAM轨迹漂移问题,提出利用建筑信息模型(BIM)的结构先验增强RGB-D SLAM系统,通过墙面对应与几何约束优化减少漂移,提升全局一致性,实验显示轨迹误差降低25.23%,地图精度提升7.14%。

Comments 9 pages, 7 tables, 4 figures

详情
AI中文摘要

监测建筑施工现场需要将计划设计与实际建造状态进行比较,而同步定位与地图构建(SLAM)技术可以实时估计实际状态。然而,视觉SLAM在建筑环境中容易产生轨迹漂移,生成的地图在几何上与实际环境不准确。为解决这一局限,我们利用从建筑信息模型(BIM)导出的结构先验增强现有的RGB-D SLAM系统。该系统将检测到的墙面与BIM中的对应墙面关联,并将这些对应关系作为几何约束加入后端优化,从而减少漂移并增强全局一致性。所提方法实时运行,并在多个真实建筑工地上验证,与最先进的基线相比,平均轨迹误差降低25.23%,地图精度提升7.14%。鲁棒性分析进一步表明,该方法对不完整的BIM数据以及计划模型与实际环境之间的几何差异具有韧性。

英文摘要

Monitoring building construction sites requires comparing the as-planned design with the as-built state, which can be estimated in real time using Simultaneous Localization and Mapping (SLAM) techniques. However, visual SLAM is prone to trajectory drift in construction environments, producing maps that are geometrically inaccurate with the actual environment. To address this limitation, we augment an existing RGB-D SLAM system with structural priors derived from the Building Information Model (BIM). The system associates detected walls with their BIM counterparts and includes these correspondences as geometric constraints in the back-end optimization, reducing drift and enhancing global consistency. The proposed method operates in real time and is validated on multiple real construction sites, achieving an average trajectory error reduction of 25.23% and a 7.14% improvement in map accuracy over state-of-the-art baselines. Robustness analyses further demonstrate resilience to incomplete BIM data and geometric discrepancies between as-planned models and the as-built environment.