基于lstm的智能救护车自适应视频流

Bo-Wen Wang, Wen-Hsuan Shen, M. Hsieh, Hsin-Mu Tsai
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引用次数: 0

摘要

智能救护车可以持续共享患者的生命体征数据和来自救护车的视频馈送,这样医院的医生就可以与救护车上的护理人员一起工作,对患者进行早期评估,甚至提供治疗指导。医生和护理人员之间无缝合作的一个先决条件是高质量的视频流。图像质量差或延迟高的视频流将给准确诊断患者带来很大困难。由于视频需要从移动的救护车上传送,移动网络服务质量的快速变化会影响流媒体的性能。与静态场景相比,在移动场景中引入了额外的信道损伤(例如,阴影效应)。在这种情况下,至关重要的是视频流比特率能够快速响应服务质量的变化并进行相应的调整,从而使视频质量充分利用可用带宽,但不超过信道所能支持的带宽。为此,我们提出了EMS-RTC,这是一个专门满足救护车服务需求的实时视频流平台。EMS-RTC训练一个分类器,根据在真实驾驶场景中收集的一系列信号和网络相关指标的特征推断出最佳比特率。我们将EMS-RTC与最先进的自适应比特率算法(即Google拥塞控制)进行比较。从真实驾驶场景中收集的评估结果表明,EMS-RTC将失速事件的总持续时间减少了3.85倍,而代价是图像质量的降低可以忽略不计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EMS-RTC: LSTM-based Adaptive Video Streaming for Smart Ambulance
A smart ambulance continuously shares the patient's vital signs data and video feeds from the ambulance so that the doctors stationed in the hospital can work with the paramedics in the ambulance, performing an early assessment of the patient or even providing treatment guidelines. One prerequisite to the seamless cooperation between the doctor and the paramedics is high-quality video streaming. Video streaming with bad image quality or high latency would introduce significant difficulty in providing accurate diagnoses of the patient. As the video needs to be delivered from a moving ambulance, the streaming performance is influenced by the fast variation of the service quality of the mobile network. Compared to static scenarios, additional channel impairments (e.g., the shadowing effect) is introduced in the mobile scenarios. In this case, it is crucial that the video streaming bitrate can quickly react to the changes of the service quality and is adjusted accordingly, such that the video quality leverages full available bandwidth, but does not exceed what the channel can support. To this end, we propose EMS-RTC, a real-time video streaming platform specialized for the need for ambulance services. EMS-RTC trains a classifier to infer the optimal bitrate based on features from a range of signal- and network-related metrics, collected in real-world driving scenarios. We compare EMS-RTC to a state-of-the-art adaptive bitrate algorithm (i.e., Google congestion control). Evaluation results collected from real-world driving scenarios show that EMS-RTC reduces the total time duration of stall events by a factor of 3.85, at the cost of a neglectable reduction of image quality.
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