Deterministic Video Streaming with Deep Learning Enabled Base Station Intervention for Stable Remote Driving System

Kohei Kato, Katsuya Suto, Koya Sato
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引用次数: 2

Abstract

A remote driving system (RDS) via wireless net- works is a promising solution to guarantee the safety of autonomous vehicles. In the system, a remote operator controls vehicles while watching video frames transmitted from the controlled vehicles. The conventional video streaming method decides the video resolution using the statistical quality of services (QoS) to guarantee the delay constraints; however, it may yield a long delay in best-effort wireless networks if the quality of the wireless channel suddenly changes. To cope with the issue, we propose a deterministic networking approach. A base station (BS) predicts a future QoS using a radio map and driving route of vehicles to decides the adequate video resolution that satisfies the delay constraints of RDS. BS also has a super-resolution (SR) function to enhance the quality of experience (QoE) in video streaming. Thanks to the proposed QoS prediction and video frame resolution decision, BS can use the adequate SR model for each video frame, further enhancing QoE. Using the measurement datasets of radio access networks, we confirm that the proposed RDS can provide high-quality video streaming while satisfying the delay constraints in any time-series wireless channel situations.
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基于深度学习的确定性视频流基站干预稳定远程驾驶系统
基于无线网络的远程驾驶系统(RDS)是保证自动驾驶汽车安全的一种很有前途的解决方案。在该系统中,远程操作员一边控制车辆,一边观看从被控制车辆传输的视频帧。传统的视频流方法利用统计服务质量(QoS)来决定视频分辨率,以保证延迟约束;然而,如果无线信道的质量突然发生变化,它可能会在尽力而为的无线网络中产生长时间的延迟。为了解决这个问题,我们提出了一种确定性网络方法。基站(BS)利用无线地图和车辆行驶路线预测未来的QoS,以确定满足RDS延迟约束的适当视频分辨率。BS还具有超分辨率(SR)功能,以提高视频流的体验质量(QoE)。基于所提出的QoS预测和视频帧分辨率决策,BS可以对每个视频帧使用适当的SR模型,进一步提高QoE。利用无线接入网络的测量数据集,我们证实了所提出的RDS可以在满足任何时间序列无线信道情况下的延迟约束的情况下提供高质量的视频流。
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