Advances in deep vision techniques and ubiquity of smart cameras will drive the next generation of video analytics. However, video analytics applications consume vast amounts of energy as both deep learning techniques and cameras are power-hungry. In this paper, we focus on a parking video analytics platform and propose RL-CamSleep, a deep reinforcement learning-based technique, to actuate the cameras to reduce the energy footprint while retaining the system's utility. Our key insight is that many video-analytics applications do not always need to be operational, and we can design policies to activate video analytics only when necessary. Moreover, our work is complementary to existing work that focuses on improving hardware and software efficiency. We evaluate our approach on a city-scale parking dataset having 76 streets spread across the city. Our analysis demonstrates how streets have various parking patterns, highlighting the importance of an adaptive policy. Our approach can learn such an adaptive policy that can reduce the average energy consumption by 76.38% and achieve an average accuracy of more than 98% in performing video analytics.
翻译:深视技术的进步和智能相机的普及将驱动下一代视频分析。 然而,视频分析应用消耗大量能量,因为深学习技术和相机都是缺乏动力的。 在本文中,我们侧重于一个停车视频分析平台,并提议一个强化学习技术RL-CamSleep, 以激活相机,以减少能源足迹,同时保留系统的实用性。我们的关键见解是,许多视频分析应用并不总是需要投入使用,我们只能在必要时设计启动视频分析的政策。此外,我们的工作是对目前侧重于提高硬件和软件效率的工作的补充。我们评估了城市规模的停车数据集,该数据集分布在城市的76个街道。我们的分析表明街道是如何有各种停车模式的,突出了适应政策的重要性。我们的方法可以学习这样一种适应性政策,它可以将平均能源消耗量减少76.38%,在进行视频分析时平均精确率超过98 %。