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Distributed and Efficient Object Detection via Interactions Among Devices, Edge, and Cloud

机译:通过设备,边缘和云之间的交互进行分布式高效的对象检测

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摘要

With the rapid development of Internet-of-Things and communication techniques, media transmission in surveillance applications is gradually relying on wireless networks. Meanwhile, the emergence of edge computing has pushed the media data analysis from the cloud to the edge of the network to achieve fast response for delay-sensitive media processing tasks. Object detection is a representative delay-sensitive image processing task in surveillance applications, but faces significant challenges in this context. For example, how to compress images for transmission in wireless environment without compromising the detection accuracy, and how to integrate and update local inference models online in an edge computing-based object detection system. In this paper, we propose an object detection architecture based on edge computing to achieve distributed and efficient object detection for surveillance applications. Under this architecture, we develop an adaptive Region-of-Interest-based image compression scheme for end devices to efficiently compress their captured images for wireless transmission but not to sacrifice the object detection accuracy of edge servers. Furthermore, we carefully design distributed and communication-efficient interactions among end devices, edge servers, and the cloud to dynamically optimize the object detection accuracy online. Extensive simulation results demonstrate that our proposed architecture not only achieves a competitive detection accuracy to traditional cloud-based objective detection solution with reduced response delay but also significantly improves the image transmission efficiency with adaptive image compression ratio.
机译:随着物联网和通信技术的飞速发展,监视应用程序中的媒体传输正逐渐依赖于无线网络。同时,边缘计算的出现推动了媒体数据分析从云到网络的边缘,以实现对延迟敏感的媒体处理任务的快速响应。对象检测是监视应用程序中代表性的延迟敏感图像处理任务,但是在这种情况下面临巨大挑战。例如,如何压缩图像以在无线环境中传输而不影响检测精度,以及如何在基于边缘计算的对象检测系统中在线集成和更新本地推理模型。在本文中,我们提出了一种基于边缘计算的目标检测架构,以实现用于监视应用的分布式高效目标检测。在这种体系结构下,我们为终端设备开发了一种基于兴趣区域的自适应图像压缩方案,可以有效地压缩其捕获的图像以进行无线传输,而不会牺牲边缘服务器的对象检测精度。此外,我们精心设计了终端设备,边缘服务器和云之间的分布式且通信高效的交互,以动态地优化在线对象检测的准确性。大量的仿真结果表明,我们提出的体系结构不仅与传统的基于云的目标检测解决方案相比具有较低的响应延迟,而且具有出色的检测精度,而且具有自适应的图像压缩比,可以显着提高图像传输效率。

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