A platform for research: civil engineering, architecture and urbanism
Chapter Indoor Trajectory Reconstruction Using Building Information Modeling and Graph Neural Networks
Trajectory reconstruction of pedestrian is of paramount importance to understand crowd dynamics and human movement pattern, which will provide insights to improve building design, facility management and route planning. Camera-based tracking methods have been widely explored with the rapid development of deep learning techniques. When moving to indoor environment, many challenges occur, including occlusions, complex environments and limited camera placement and coverage. Therefore, we propose a novel indoor trajectory reconstruction method using building information modeling (BIM) and graph neural network (GNN). A spatial graph representation is proposed for indoor environment to capture the spatial relationships of indoor areas and monitoring points. Closed circuit television (CCTV) system is integrated with BIM model through camera registration. Pedestrian simulation is conducted based on the BIM model to simulate the pedestrian movement in the considered indoor environment. The simulation results are embedded into the spatial graph for training of GNN. The indoor trajectory reconstruction is implemented as GNN conducts edge classification on the spatial graph
Chapter Indoor Trajectory Reconstruction Using Building Information Modeling and Graph Neural Networks
Trajectory reconstruction of pedestrian is of paramount importance to understand crowd dynamics and human movement pattern, which will provide insights to improve building design, facility management and route planning. Camera-based tracking methods have been widely explored with the rapid development of deep learning techniques. When moving to indoor environment, many challenges occur, including occlusions, complex environments and limited camera placement and coverage. Therefore, we propose a novel indoor trajectory reconstruction method using building information modeling (BIM) and graph neural network (GNN). A spatial graph representation is proposed for indoor environment to capture the spatial relationships of indoor areas and monitoring points. Closed circuit television (CCTV) system is integrated with BIM model through camera registration. Pedestrian simulation is conducted based on the BIM model to simulate the pedestrian movement in the considered indoor environment. The simulation results are embedded into the spatial graph for training of GNN. The indoor trajectory reconstruction is implemented as GNN conducts edge classification on the spatial graph
Chapter Indoor Trajectory Reconstruction Using Building Information Modeling and Graph Neural Networks
Li, Mingkai (author) / Wong, Peter Kok-Yiu (author) / Huang, Cong (author) / Cheng, Jack C. P. (author)
Proceedings e report ; 137
2023
1 Online-Ressource (12 p.)
Book
Electronic Resource
English
Indoor building reconstruction from occluded point clouds using graph-cut and ray-tracing
BASE | 2018
|Indoor environment data time-series reconstruction using autoencoder neural networks
BASE | 2021
|Indoor scene reconstruction using feature sensitive primitive extraction and graph-cut
Online Contents | 2014
|