Abstract

Many infrastructure assets in transportation such as roads and bridges represent challenges for inspection and maintenance due to advanced age, structural deficiencies and modifications. Concepts such as Building Information Modelling (BIM) aim to alleviate the problem of health monitoring and asset management by providing digital building models constructed from survey data to all stakeholders. Ageing and oftentimes poorly-documented infrastructure objects such as bridges in particular benefit from a continuous integration of changes to form a digital twin which reflects the asset’s as-is state. However, the process of reconstructing geometric–semantic models from survey data is a manual and labour-intensive process and makes continuously updating the models a difficult task. To automate this process, a cross-domain approach using an artificial neural network is presented which performs semantic segmentation in the image domain and transfers the results over to the point cloud. For the following fine segmentation, geometric knowledge in the 3D domain is used for post-processing and filtering via geometric reasoning. Using this method, a 3D semantic segmentation is achieved which does not require any 3D point cloud training data and only a low amount of image training data.

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