MACVSPJun 17, 2022

Edge-Aided Sensor Data Sharing in Vehicular Communication Networks

arXiv:2206.08882v18 citationsh-index: 37
Originality Incremental advance
AI Analysis

This addresses a major challenge in sensor calibration for connected automated vehicles, though it appears incremental as it builds on existing data sharing and fusion schemes.

The paper tackles the problem of unknown and time-varying sensor measurement errors impairing perception quality in vehicular networks, proposing a method that improves perception accuracy by around 80% with low bandwidth usage.

Sensor data sharing in vehicular networks can significantly improve the range and accuracy of environmental perception for connected automated vehicles. Different concepts and schemes for dissemination and fusion of sensor data have been developed. It is common to these schemes that measurement errors of the sensors impair the perception quality and can result in road traffic accidents. Specifically, when the measurement error from the sensors (also referred as measurement noise) is unknown and time varying, the performance of the data fusion process is restricted, which represents a major challenge in the calibration of sensors. In this paper, we consider sensor data sharing and fusion in a vehicular network with both, vehicle-to-infrastructure and vehicle-to-vehicle communication. We propose a method, named Bidirectional Feedback Noise Estimation (BiFNoE), in which an edge server collects and caches sensor measurement data from vehicles. The edge estimates the noise and the targets alternately in double dynamic sliding time windows and enhances the distributed cooperative environment sensing at each vehicle with low communication costs. We evaluate the proposed algorithm and data dissemination strategy in an application scenario by simulation and show that the perception accuracy is on average improved by around 80 % with only 12 kbps uplink and 28 kbps downlink bandwidth.

Foundations

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