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Deep-Learning-Based Classification of Point Clouds for Bridge Inspection
| Content Provider | MDPI |
|---|---|
| Author | Kim, Hyeonsoo Kim, Changwan |
| Copyright Year | 2020 |
| Description | Conventional bridge maintenance requires significant time and effort because it involves manual inspection and two-dimensional drawings are used to record any damage. For this reason, a process that identifies the location of the damage in three-dimensional space and classifies the bridge components involved is required. In this study, three deep-learning models—PointNet, PointCNN, and Dynamic Graph Convolutional Neural Network (DGCNN)—were compared to classify the components of bridges. Point cloud data were acquired from three types of bridge (Rahmen, girder, and gravity bridges) to determine the optimal model for use across all three types. Three-fold cross-validation was employed, with overall accuracy and intersection over unions used as the performance measures. The mean interval over unit value of DGCNN is 86.85%, which is higher than 84.29% of Pointnet, 74.68% of PointCNN. The accurate classification of a bridge component based on its relationship with the surrounding components may assist in identifying whether the damage to a bridge affects a structurally important main component. |
| Starting Page | 3757 |
| e-ISSN | 20724292 |
| DOI | 10.3390/rs12223757 |
| Journal | Remote Sensing |
| Issue Number | 22 |
| Volume Number | 12 |
| Language | English |
| Publisher | MDPI |
| Publisher Date | 2020-11-16 |
| Access Restriction | Open |
| Subject Keyword | Remote Sensing Characterization and Testing of Materials Bridge Inspection Bridge Component Classification Deep Learning Dgcnn Pointcnn Pointnet Point Cloud Data |
| Content Type | Text |
| Resource Type | Article |