360 度三模扫描:为丰富 BIM 模型语义而设计的模块化多传感器平台

Fiona C. Collins, F. Noichl, Martin Slepicka, Gerda Cones, André Borrmann
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引用次数: 0

摘要

摘要点云、图像数据和相应的处理算法正在被深入研究,以创建和丰富包含现状信息的建筑信息模型(BIM),并在整个建筑生命周期内保持其价值。点云可以使用激光雷达采集,并利用图像中的色彩信息加以丰富。作为此类双传感器系统的补充,热成像技术可捕捉红外光谱,深入了解物体表面的温度分布情况,并可诊断出人类无法看到的建筑物现状能量健康状况。虽然这三种传感器模式通常是成对组合使用,但利用三模式传感器融合功能的系统却寥寥无几。本文介绍了一种由激光雷达、RGB 和辐射热红外传感器组成的传感器系统,可通过双轴旋转捕捉 360 度的范围。由此产生的三模态数据被融合到热彩色点云中,并从中得出标准室内建筑环境的温度值。定性数据分析显示了在最先进的扫描到 BIM 管道中进一步解锁对象语义的潜力。此外,还对跨模态使用语义分割进行自动、准确的温度计算进行了展望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
360-Degree Tri-Modal Scanning: Engineering a Modular Multi-Sensor Platform for Semantic Enrichment of BIM Models
Abstract. Point clouds, image data, and corresponding processing algorithms are intensively investigated to create and enrich Building Information Models (BIM) with as-is information and maintain their value across the building lifecycle. Point clouds can be captured using LiDAR and enriched with color information from images. Complementary to such dual-sensor systems, thermography captures the infrared light spectrum, giving insight into the temperature distribution on an object’s surface and allowing a diagnosis of the as-is energetic health of buildings beyond what humans can see. Although the three sensor modes are commonly used in pair-wise combinations, only a few systems leveraging the power of tri-modal sensor fusion have been proposed. This paper introduces a sensor system comprising LiDAR, RGB, and a radiometric thermal infrared sensor that can capture a 360-degree range through bi-axial rotation. The resulting tri-modal data is fused to a thermo-color point cloud from which temperature values are derived for a standard indoor building setting. Qualitative data analysis shows the potential for unlocking further object semantics in a state-of-the-art Scan-to-BIM pipeline. Furthermore, an outlook is provided on the cross-modal usage of semantic segmentation for automatic, accurate temperature calculations.
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