Enabling Edge-Cloud Video Analytics for Robotics Applications

Yiding Wang, Weiyan Wang, Duowen Liu, Xin Jin, Junchen Jiang, Kai Chen
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引用次数: 28

Abstract

Emerging deep learning-based video analytics tasks demand computation-intensive neural networks and powerful computing resources on the cloud to achieve high accuracy. Due to the latency requirement and limited network bandwidth, edge-cloud systems adaptively compress the data to strike a balance between overall analytics accuracy and bandwidth consumption. However, the degraded data leads to another issue of poor tail accuracy, which means the extremely low accuracy of a few semantic classes and video frames. Autonomous robotics applications especially value the tail accuracy performance but suffer using the prior edge-cloud systems.We present Runespoor, an edge-cloud video analytics system to manage the tail accuracy and enable emerging robotics applications. We train and deploy a super-resolution model tailored for the tail accuracy of analytics tasks on the server to significantly improves the performance on hard-to-detect classes and sophisticated frames. During online operation, we use an adaptive data rate controller to further improve the tail performance by instantly adjusting the data rate policy according to the video content. Our evaluation shows that Runespoor improves class-wise tail accuracy by up to 300%, frame-wise 90%/99% tail accuracy by up to 22%/54%, and greatly improves the overall accuracy and bandwidth trade-off.
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为机器人应用启用边缘云视频分析
新兴的基于深度学习的视频分析任务需要计算密集型的神经网络和强大的云计算资源来实现高精度。由于延迟需求和有限的网络带宽,边缘云系统自适应压缩数据,以在整体分析准确性和带宽消耗之间取得平衡。然而,降级的数据导致了另一个问题,尾部精度差,这意味着一些语义类和视频帧的精度极低。自主机器人应用特别重视尾部精度性能,但使用先前的边缘云系统会受到影响。我们介绍Runespoor,一个边缘云视频分析系统,用于管理尾巴的准确性,并使新兴的机器人应用成为可能。我们训练并部署了一个为服务器上分析任务的尾部准确性量身定制的超分辨率模型,以显着提高难以检测的类和复杂帧的性能。在线运行时,我们采用自适应数据速率控制器,根据视频内容即时调整数据速率策略,进一步提高尾部性能。我们的评估表明,Runespoor将类类尾部精度提高了300%,帧类90%/99%尾部精度提高了22%/54%,并大大提高了整体精度和带宽权衡。
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