Abstract

Collapsed buildings should be detected with the highest priority during earthquake emergency response, due to the associated fatality rates. Although deep learning-based damage detection using vertical aerial images can achieve high performance, as depth information cannot be obtained, it is difficult to detect collapsed buildings when their roofs are not heavily damaged. Airborne LiDAR can efficiently obtain the 3D geometries of buildings (in the form of point clouds) and thus has greater potential to detect various collapsed buildings. However, there have been few previous studies on deep learning-based damage detection using point cloud data, due to a lack of large-scale datasets. Therefore, in this paper, we aim to develop a dataset tailored to point cloud-based building damage detection, in order to investigate the potential of point cloud data in collapsed building detection. Two types of building data are created: building roof and building patch, which contains the building and its surroundings. Comprehensive experiments are conducted under various data availability scenarios (pre–post-building patch, post-building roof, and post-building patch) with varying reference data. The pre–post scenario tries to detect damage using pre-event and post-event data, whereas post-building patch and roof only use post-event data. Damage detection is implemented using both basic and modern 3D point cloud-based deep learning algorithms. To adapt a single-input network, which can only accept one building’s data for a prediction, to the pre–post (double-input) scenario, a general extension framework is proposed. Moreover, a simple visual explanation method is proposed, in order to conduct sensitivity analyses for validating the reliability of model decisions under the post-only scenario. Finally, the generalization ability of the proposed approach is tested using buildings with different architectural styles acquired by a distinct sensor. The results show that point cloud-based methods can achieve high accuracy and are robust under training data reduction. The sensitivity analysis reveals that the trained models are able to locate roof deformations precisely, but have difficulty recognizing global damage, such as that relating to the roof inclination. Additionally, it is revealed that the model decisions are overly dependent on debris-like objects when surroundings information is available, which leads to misclassifications. By training on the developed dataset, the model can achieve moderate accuracy on another dataset with different architectural styles without additional training.

Highlights

  • Building damage detection is a crucial task after large-scale natural disasters, such as earthquakes, as it can provide vital information for humanitarian assistance and post-disaster recovery

  • The success of deep learning has led to an increased interest in applying deep neural networks (DNNs) to large-scale building damage detection using vertical aerial images [8], where their performance has been proven to be superior to that of conventional supervised learning approaches [9]

  • This study aims to reveal the potential and current limitations of 3D point cloud-based deep learning approaches for building damage detection by creating a dataset tailored to the targeted task

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Summary

Introduction

Building damage detection is a crucial task after large-scale natural disasters, such as earthquakes, as it can provide vital information for humanitarian assistance and post-disaster recovery. Trained DNNs are able to classify building damage by learning the patterns of roof failure, as well as the surrounding objects (e.g., debris, collapsed walls). Despite their state-of-the-art performance, fundamental limitations with respect to image-based approaches have been reported. This is due to a lack of 3D geometric information of buildings revealed in vertical 2D images. The use of technology that is more suitable for the detection of collapsed buildings needs to be introduced

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