Publication | Closed Access
A Capsule Network for Traffic Speed Prediction in Complex Road Networks
56
Citations
10
References
2018
Year
Unknown Venue
Convolutional Neural NetworkTraffic TheoryEngineeringMachine LearningTraffic FlowTraffic Flow PredictionNeural NetworkNetwork AnalysisComplex Road NetworksIntelligent Traffic ManagementData ScienceTraffic PredictionMachine VisionDeep Learning ApproachComputer ScienceDeep LearningTraffic MonitoringComputer VisionNetwork ScienceCapsule NetworkTraffic Speed PredictionTraffic Model
This paper proposes a deep learning approach for traffic flow prediction in complex road networks. Traffic flow data from induction loop sensors are essentially a time series, which is also spatially related to traffic in different road segments. The spatio-temporal traffic data can be converted into an image where the traffic data are expressed in a 3D space with respect to space and time axes. Although convolutional neural networks (CNNs) have been showing surprising performance in understanding images, they have a major drawback. In the max pooling operation, CNNs are losing important information by locally taking the highest activation values. The inter-relationship in traffic data measured by sparsely located sensors in different time intervals should not be neglected in order to obtain accurate predictions. Thus, we propose a neural network with capsules that replaces max pooling by dynamic routing. This is the first approach that employs the capsule network on a time series forecasting problem, to our best knowledge. Moreover, an experiment on real traffic speed data measured in the Santander city of Spain demonstrates the proposed method outperforms the state-of-the-art method based on a CNN by 13.1% in terms of root mean squared error.
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