ViWi Vision-Aided mmWave Beam Tracking: Dataset, Task, and Baseline Solutions
Abstract
Vision-aided wireless communication is motivated by the recent advances in deep learning and computer vision as well as the increasing dependence on line-of-sight links in millimeter wave (mmWave) and terahertz systems. By leveraging vision, this new research direction enables an interesting set of new capabilities such as vision-aided mmWave beam and blockage prediction, proactive hand-off, and resource allocation among others. These capabilities have the potential of reliably supporting highly-mobile applications such as vehicular/drone communications and wireless virtual/augmented reality in mmWave and terahertz systems. Investigating these interesting applications, however, requires the development of special dataset and machine learning tasks. Based on the Vision-Wireless (ViWi) dataset generation framework [1], this paper develops an advanced and realistic scenario/dataset that features multiple base stations, mobile users, and rich dynamics. Enabled by this dataset, the paper defines the vision-wireless mmWave beam tracking task (ViWi-BT) and proposes a baseline solution that can provide an initial benchmark for the future ViWi-BT algorithms.
Keywords
Cite
@article{arxiv.2002.02445,
title = {ViWi Vision-Aided mmWave Beam Tracking: Dataset, Task, and Baseline Solutions},
author = {Muhammad Alrabeiah and Jayden Booth and Andrew Hredzak and Ahmed Alkhateeb},
journal= {arXiv preprint arXiv:2002.02445},
year = {2020}
}
Comments
The ViWi-BT Challenge at ICC 2020 - https://www.viwi-dataset.net/viwi-bt.html