面向在可编程网络设备上执行计算机视觉功能

ENCP '19 Pub Date : 2019-12-09 DOI:10.1145/3359993.3366646
René Glebke, Johannes Krude, Ike Kunze, Jan Rüth, Felix Senger, Klaus Wehrle
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引用次数: 27

摘要

通过提供在数据包穿越网络时已经执行处理的可能性,可编程数据平面为遭受严格延迟和高带宽要求的应用程序开辟了新的视角。实时计算机视觉(CV)具有很高的数据速率,在自动驾驶汽车和工业机械的控制中往往扮演着任务和安全关键的角色,因此在网络元素中执行其部分逻辑可能会特别受益。因此,在本文中,我们探讨了将CV引入网络所需的条件。我们介绍了在p4可编程网卡上实现基于卷积滤波器的行跟踪算法的正在进行的工作。我们发现,通过适当地识别图像数据中感兴趣的区域,并在NIC的入口和出口管道的各个匹配/动作阶段中勤奋地分配必要的计算,我们的原型实现可以在640x480像素灰度图像上实现每秒19次以上的决策,其过滤器大到足以引导小型自动驾驶汽车通过各种路线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Executing Computer Vision Functionality on Programmable Network Devices
By offering the possibility to already perform processing as packets traverse the network, programmable data planes open up new perspectives for applications suffering from strict latency and high bandwidth requirements. Real-time Computer Vision (CV), with its high data rates and often mission- and safety-critical roles in the control of autonomous vehicles and industrial machinery, could particularly benefit from executing parts of its logic within network elements. In this paper, we thus explore what it takes to bring CV to the network. We present our work-in-progress efforts of implementing a line-following algorithm based on convolution filters on a P4-programmable NIC. We find that by appropriately identifying regions of interest in the image data and by diligently distributing the necessary calculations among the various match/action stages of the ingress- and egress pipelines of the NIC, our prototypical implementation can achieve over 19 decisions per second on 640x480 px grayscale images with filters large enough to guide a small autonomous car through various courses.
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