Publication | Closed Access
Deep Learning on Multimodal Sensor Data at the Wireless Edge for Vehicular Network
66
Citations
36
References
2022
Year
Vehicle CommunicationInternet Of VehicleEngineeringMachine LearningBeam SelectionBeam Selection SpeedData ScienceVehicle NetworkEmbedded Machine LearningMillimeter-wave LinksConnected CarComputer EngineeringComputer ScienceDeep LearningNeural Architecture SearchMillimeter Wave TechnologySignal ProcessingEdge ComputingMultimodal Sensor DataWireless EdgeOver-the-air ComputationBeamforming
Beam selection for millimeter-wave links in a vehicular scenario is a challenging problem, as an exhaustive search among all candidate beam pairs cannot be assuredly completed within short contact times. We solve this problem via a novel expediting beam selection by leveraging multimodal data collected from sensors like LiDAR, camera images, and GPS. We propose individual modality and distributed fusion-based deep learning (F-DL) architectures that can execute locally as well as at a mobile edge computing center (MEC), with a study on associated tradeoffs. We also formulate and solve an optimization problem that considers practical beam-searching, MEC processing and sensor-to-MEC data delivery latency overheads for determining the output dimensions of the above F-DL architectures. Results from extensive evaluations conducted on publicly available synthetic and home-grown real-world datasets reveal 95% and 96% improvement in beam selection speed over classical RF-only beam sweeping, respectively. F-DL also outperforms the state-of-the-art techniques by 20-22% in predicting top-10 best beam pairs.
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