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Exploring the Potential of Image-Based 3D Geometry and Appearance Reasoning for Automated Construction Progress Monitoring

机译:探索基于图像的3D几何形状和外观推理在自动施工进度监控中的潜力

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The exponential increase in the volume of images and videos captured on construction sites and the growing availability of building information models (BIM) and schedules with production-level details has created a unique opportunity to automate how progress is monitored and reported on construction sites. However, the state-of-the-art methods of automated progress comparison are still in its infancy largely because of these methods either only leverage geometry of the 3D reconstructed scenes to reason about presence or detect and classify construction material from 2D images without considering geometrical characteristics. To the best of our knowledge, this paper is the first to offer a computer vision method that can jointly reason about geometry and appearance of observed BIM elements in site images and videos to monitor and report on their state of progress. The new method fuses structure-from-motion geometrical features together with directional and radial appearance features in a new deep convolutional neural network (CNN) architecture to detect and classify state of work-in-progress. Our experimental results show that using geometrical features reduces errors in appearance-based recognition methods and offers a new opportunity to scale the applicability of automated progress detection methods to real-world settings.
机译:在建筑工地上捕获的图像和视频的数量呈指数级增长,以及具有生产级别详细信息的建筑信息模型(BIM)和进度表的可用性不断增加,创造了独特的机会来自动化如何在建筑工地上监视和报告进度。但是,自动进度比较的最新方法仍处于起步阶段,这主要是因为这些方法要么仅利用3D重建场景的几何形状来推断存在,要么从2D图像中检测建筑材料并对其进行分类,而无需考虑几何形状。特征。据我们所知,本文是第一个提供计算机视觉方法的方法,可以共同推理站点图像和视频中观察到的BIM元素的几何形状和外观,以监视和报告其进度状态。该新方法将运动中的结构几何特征与方向和径向外观特征融合在一起,形成了新的深度卷积神经网络(CNN)体系结构,以检测和分类进行中的状态。我们的实验结果表明,使用几何特征可以减少基于外观的识别方法中的错误,并为将自动进度检测方法的适用性扩展到实际设置提供了新的机会。

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