EFCam:配置自适应雾辅助无线相机与强化学习

Siyuan Zhou, D. V. Le, Joy Qiping Yang, Rui Tan, Daren Ho
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引用次数: 1

摘要

视觉传感已越来越多地应用于工业过程。本文介绍了一种工业无线摄像系统EFCam的设计与实现,该系统利用低功耗无线通信和边缘雾计算来实现无线、节能的视觉感知。相机进行图像预处理(即压缩或特征提取),并将数据传输到资源丰富的雾节点,使用深度模型进行高级处理。EFCam允许形成配置空间的几个参数的动态配置。其目的是在应用需求和无线信道条件的动态变化下,调整配置,使深度模型在雾节点保持所需的视觉感知性能,同时使相机在图像采集、预处理和数据通信方面的能耗最小。然而,由于所涉及的因素之间的复杂关系,适应是具有挑战性的。为了解决这种复杂性,我们应用深度强化学习来学习最优适应策略。基于跟踪驱动的仿真和实验的广泛评估表明,与四种基于滞后的自适应基线方法相比,EFCam符合真实工业产品目标跟踪应用的精度和延迟要求,能耗更低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EFCam: Configuration-Adaptive Fog-Assisted Wireless Cameras with Reinforcement Learning
Visual sensing has been increasingly employed in industrial processes. This paper presents the design and implementation of an industrial wireless camera system, namely, EFCam, which uses low-power wireless communications and edge-fog computing to achieve cordless and energy-efficient visual sensing. The camera performs image pre-processing (i.e., compression or feature extraction) and transmits the data to a resourceful fog node for advanced processing using deep models. EFCam admits dynamic configurations of several parameters that form a configuration space. It aims to adapt the configuration to maintain desired visual sensing performance of the deep model at the fog node with minimum energy consumption of the camera in image capture, pre-processing, and data communications, under dynamic variations of application requirement and wireless channel conditions. However, the adaptation is challenging due primarily to the complex relationships among the involved factors. To address the complexity, we apply deep reinforcement learning to learn the optimal adaptation policy. Extensive evaluation based on trace-driven simulations and experiments show that EFCam complies with the accuracy and latency requirements with lower energy consumption for a real industrial product object tracking application, compared with four baseline approaches incorporating hysteresis-based adaptation.
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