Integrating Heterogeneous Sources for Learned Prediction of Vehicular Data Consumption


연구 분야: Verification



학회: 2022 23rd IEEE International Conference on Mobile Data Management (MDM)


초록

In addition to the multiple sensors to measure parameters that can be used to improve both safety and efficiency, modern vehicles also gather information about external data (e.g., traffic conditions, weather) which, if properly used, could further improve the overall trip experience. Specifically, when it comes to navigation, one source that can provide increased context awareness, especially for autonomous driving, are the High Definition (HD) maps, which have recently witnessed a tremendous growth of popularity in vehicular technology and use. As they are limited to a particular geographic area, different portions need to be downloaded (and processed) on multiple occasions throughout a given trip, along with the other data from other internal and external sources. In this paper, we provide an effective deep learning approach for the recently introduced problem of Predicting Map Data Consumption (PMDC) in the future time instants for a given trip. We propose a novel methodology that integrates multiple data sources (road network, traffic, historic trips, HD maps) and, for a given trip, enables prediction of the map data consumption. Our experimental observations demonstrate the benefits of the proposed approach over the candidate baselines.


Author Profile
Andi Zang

Department of Computer Science Northwestern University Evanston IL USA

Israel
Author Profile
Xiaofeng Zhu

Microsoft Redmond WA USA

United States
Author Profile
Fan Zhou

School of Information and SW Engineering University of Electronic Science and Technology Chengdu PR China

Andorra

📄 논문 정보

발행 연도 2022년
인용수 1
출판 국가 Israel, Andorra, United States
사이트 IEEE
좋아요 수 0

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