Edge Intelligence for Autonomous Driving in 6G Wireless System: Design Challenges and Solutions
Bo Yang, Xuelin Cao, Kai Xiong, Chau Yuen, Yong Liang Guan, Supeng, Leng, Lijun Qian, and Zhu Han

TL;DR
This paper proposes a two-tier edge intelligence framework leveraging 6G wireless and multi-task learning to enhance autonomous driving by optimizing offloading, inference, and data privacy, addressing real-time processing challenges.
Contribution
It introduces a novel two-tier EI framework with neural network segmentation and MTL-based offloading optimization for autonomous vehicles in 6G networks.
Findings
Effective offloading strategy with high accuracy
Reduced communication delay through neural network segmentation
Enhanced inference efficiency and data privacy
Abstract
In a level-5 autonomous driving system, the autonomous driving vehicles (AVs) are expected to sense the surroundings via analyzing a large amount of data captured by a variety of onboard sensors in near-real-time. As a result, enormous computing costs will be introduced to the AVs for processing the tasks with the deployed machine learning (ML) model, while the inference accuracy may not be guaranteed. In this context, the advent of edge intelligence (EI) and sixth-generation (6G) wireless networking are expected to pave the way to more reliable and safer autonomous driving by providing multi-access edge computing (MEC) together with ML to AVs in close proximity. To realize this goal, we propose a two-tier EI-empowered autonomous driving framework. In the autonomous-vehicles tier, the autonomous vehicles are deployed with the shallow layers by splitting the trained deep neural network…
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Taxonomy
TopicsIoT and Edge/Fog Computing · Privacy-Preserving Technologies in Data · Age of Information Optimization
