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Multi-Sample Image-based Material Recognition and Formalized Sequencing Knowledge for Operation-Level Construction Progress Monitoring

机译:基于多样本图像的材料识别和正式的操作级施工进度监测的测序知识

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This paper presents a new method for operation-level monitoring of construction progress using image-based 3D point clouds and 4D Building Information Model (BIM). Previous research on comparing point clouds to 4D BIM has proven the practicality of performing progress monitoring by occupancy-based assessment: detecting if BIM elements are present in the scene. Nonetheless, without appearance information, operation-level monitoring - formwork vs. concrete surfaces for concrete placement- is still challenging. By leveraging the interconnectivity of site images and BIM-registered point clouds, this paper presents a new method for densely sampling and extracting 2D patches from all site images from which BIM elements are expected to be visible. Our method reasons about occlusions in the scene and classifies the material in each image patch. By formalizing the sequencing knowledge of construction operations for progress monitoring purposes and using histogram-based representation for possible types of construction materials, our method can accurately detect the current state-of-progress for BIM elements in presence of occlusions. We introduce a new image dataset for material recognition, and present promising results on operation-level progress monitoring on an actual concrete building construction site. Our method addresses the challenges of working with non-detailed BIM or high-level work breakdown structures.
机译:本文采用基于图像的3D点云和4D建筑信息模型(BIM),提出了一种新的施工进度操作级监测方法。以前关于比较点云到4D BIM的研究已经证明了通过基于占用的评估执行进度监测的实用性:检测场景中存在BIM元素。尽管如此,没有外观信息,操作级监测 - 用于混凝土放置的混凝土表面 - 仍然具有挑战性。通过利用现场图像和BIM注册点云的互连性,本文介绍了一种新的方法,用于密集采样和从所有网站图像中提取2D贴片,预期预期的BIM元件可见。我们对场景中的闭塞的方法原因,并在每个图像补丁中对材料进行分类。通过正式化施工操作的施工操作的测序知识进行进度监测目的,并利用基于直方图的建筑材料的代表,我们的方法可以准确地检测在闭塞的存在下的BIM元素的当前进展状态。我们介绍了一种新的图像数据集进行了材料识别,并提出了对实际混凝土建筑施工现场的操作级进展监测的有希望的结果。我们的方法解决了使用非详细BIM或高级工作崩溃结构的挑战。

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