TL;DR
This paper introduces a vision-aided machine learning framework that predicts blockages in 6G wireless networks using visual data, enabling proactive hand-offs to improve reliability and reduce latency.
Contribution
It presents a novel bimodal deep learning approach utilizing visual and wireless data for proactive blockage prediction and hand-off in 6G networks.
Findings
Blockage prediction accuracy exceeds 90%.
Proactive hand-off accuracy approaches 87%.
Demonstrates the effectiveness of vision-aided proactive network management.
Abstract
The sensitivity to blockages is a key challenge for the high-frequency (5G millimeter wave and 6G sub-terahertz) wireless networks. Since these networks mainly rely on line-of-sight (LOS) links, sudden link blockages highly threaten the reliability of the networks. Further, when the LOS link is blocked, the network typically needs to hand off the user to another LOS basestation, which may incur critical time latency, especially if a search over a large codebook of narrow beams is needed. A promising way to tackle the reliability and latency challenges lies in enabling proaction in wireless networks. Proaction basically allows the network to anticipate blockages, especially dynamic blockages, and initiate user hand-off beforehand. This paper presents a complete machine learning framework for enabling proaction in wireless networks relying on visual data captured, for example, by RGB…
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