TY - GEN
T1 - Dynamic Graph Convolutional LSTM application for traffic flow estimation from error-prone measurements
T2 - 8th IEEE International Conference on Data Science and Advanced Analytics, DSAA 2021
AU - Boudabous, Safa
AU - Clémençon, Stephan
AU - Labiod, Houda
AU - Garbiso, Julian
N1 - Publisher Copyright:
© 2021 IEEE.
PY - 2021/1/1
Y1 - 2021/1/1
N2 - The technological advances in the transportation and automotive industry led to the use of new types of sensing systems more cost-effective and adapted to large-scale dense deployment. Those sensing techniques allow continuously gathering traffic measurements times series in different geospatial locations. The accuracy of the obtained raw measurements is often hindered by different factors related to the sensing environment and the sensing process itself and thus fail to capture the short-term traffic variations crucial for real-time traffic monitoring. In this paper, we propose the DGC-LSTM model for area-wide traffic estimation from error-prone measurements time series. The backbone of the DGC-LSTM model is a graph convolutional Long Short Term Memory model with a dynamic adjacency matrix. The adjacency matrix is learned and optimized during the model training. The adjacency matrix values are estimated from the set of contextual features that impact the dynamicity of the dependencies in both the spatial and temporal dimensions. Experiments on a realistic synthetic labelled Bluetooth counts dataset is used for model evaluation. Lastly, we highlight the importance of transfer learning methods to improve the model applicability by ensuring model adaptation to the new deployment site while avoiding the extensive data-labelling effort.
AB - The technological advances in the transportation and automotive industry led to the use of new types of sensing systems more cost-effective and adapted to large-scale dense deployment. Those sensing techniques allow continuously gathering traffic measurements times series in different geospatial locations. The accuracy of the obtained raw measurements is often hindered by different factors related to the sensing environment and the sensing process itself and thus fail to capture the short-term traffic variations crucial for real-time traffic monitoring. In this paper, we propose the DGC-LSTM model for area-wide traffic estimation from error-prone measurements time series. The backbone of the DGC-LSTM model is a graph convolutional Long Short Term Memory model with a dynamic adjacency matrix. The adjacency matrix is learned and optimized during the model training. The adjacency matrix values are estimated from the set of contextual features that impact the dynamicity of the dependencies in both the spatial and temporal dimensions. Experiments on a realistic synthetic labelled Bluetooth counts dataset is used for model evaluation. Lastly, we highlight the importance of transfer learning methods to improve the model applicability by ensuring model adaptation to the new deployment site while avoiding the extensive data-labelling effort.
KW - Model transferability
KW - Spatiotemporal data
KW - Traffic estimation
KW - graph neural networks
UR - https://www.scopus.com/pages/publications/85126150803
U2 - 10.1109/DSAA53316.2021.9564245
DO - 10.1109/DSAA53316.2021.9564245
M3 - Conference contribution
AN - SCOPUS:85126150803
T3 - 2021 IEEE 8th International Conference on Data Science and Advanced Analytics, DSAA 2021
BT - 2021 IEEE 8th International Conference on Data Science and Advanced Analytics, DSAA 2021
PB - Institute of Electrical and Electronics Engineers Inc.
Y2 - 6 October 2021 through 9 October 2021
ER -