论文标题

分布式多代理视频快速发展

Distributed Multi-agent Video Fast-forwarding

论文作者

Lan, Shuyue, Wang, Zhilu, Roy-Chowdhury, Amit K., Wei, Ermin, Zhu, Qi

论文摘要

在许多智能系统中,一个代理网络会协作感知环境,以提高环境意识。由于这些代理通常的资源通常有限,因此确定来自不同代理的相机视图之间的内容并利用它来减少冗余/不重要的视频帧的处理,传输和存储。本文介绍了一个基于共识的分布式多代理视频快速前进的框架,名为DMVF,该框架是快速访问的多视频视频流。在我们的框架中,基于增强学习的快速媒介来解决每个相机视图,该摄像头从多种策略中定期选择以选择性处理视频帧并以可调速度传输所选框架。在每个适应期间,每个代理商都与许多相邻代理进行通信,评估所选框架自身及其邻居的框架的重要性,通过系统范围的共识算法与其他代理人一起进行了评估,并使用此类评估来决定其下一个时期的策略。与现实监视视频数据集VideoWEB的文献中的方法相比,我们的方法显着改善了重要框架的覆盖范围,还减少了系统中处理的帧数。

In many intelligent systems, a network of agents collaboratively perceives the environment for better and more efficient situation awareness. As these agents often have limited resources, it could be greatly beneficial to identify the content overlapping among camera views from different agents and leverage it for reducing the processing, transmission and storage of redundant/unimportant video frames. This paper presents a consensus-based distributed multi-agent video fast-forwarding framework, named DMVF, that fast-forwards multi-view video streams collaboratively and adaptively. In our framework, each camera view is addressed by a reinforcement learning based fast-forwarding agent, which periodically chooses from multiple strategies to selectively process video frames and transmits the selected frames at adjustable paces. During every adaptation period, each agent communicates with a number of neighboring agents, evaluates the importance of the selected frames from itself and those from its neighbors, refines such evaluation together with other agents via a system-wide consensus algorithm, and uses such evaluation to decide their strategy for the next period. Compared with approaches in the literature on a real-world surveillance video dataset VideoWeb, our method significantly improves the coverage of important frames and also reduces the number of frames processed in the system.

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