Realtime and intelligent video surveillance via camera networks involve computation-intensive vision detection tasks with massive video data, which is crucial for safety in the edge-enabled industrial Internet of Things (IIoT). Multiple video streams compete for limited communication resources on the link between edge devices and camera networks, resulting in considerable communication congestion. It postpones the completion time and degrades the accuracy of vision detection tasks. Thus, achieving high accuracy of vision detection tasks under the communication constraints and vision task deadline constraints is challenging. Previous works focus on single camera configuration to balance the tradeoff between accuracy and processing time of detection tasks by setting video quality parameters. In this paper, an adaptive camera network self-configuration method (CANS) of video surveillance is proposed to cope with multiple video streams of heterogeneous quality of service (QoS) demands for edge-enabled IIoT. Moreover, it adapts to video content and network dynamics. Specifically, the tradeoff between two key performance metrics, \emph{i.e.,} accuracy and latency, is formulated as an NP-hard optimization problem with latency constraints. Simulation on real-world surveillance datasets demonstrates that the proposed CANS method achieves low end-to-end latency (13 ms on average) with high accuracy (92\% on average) with network dynamics. The results validate the effectiveness of the CANS.
翻译:通过照相机网络进行实时和智能视频监控,包括计算密集的视觉探测任务,以及大量视频数据,这对边缘带动的工业互联网Things(IIoT)的安全至关重要。多视频流争夺边缘装置和照相机网络之间联系的有限通信资源,造成相当的通信拥堵。它推迟完成时间,降低视觉探测任务的准确性。因此,在通信限制和愿景任务最后期限限制下实现高精确度的视觉探测任务具有挑战性。以前的工作重点是单一相机配置,通过设定视频质量参数来平衡检测任务的准确性和处理时间之间的平衡。本文建议采用适应性相机网络自我配置方法(CANS)进行视频监控,以应对对边缘装置和相机网络之间联系的复杂质量(Qos)需求。此外,它适应视频内容和网络动态。具体地说,在通信限制和愿景任务期限限制下,在两种关键性能衡量标准(emph{i.e.}准确度和耐久度之间进行平衡。在本文件中,建议采用适应性拉特度限制的硬性优化问题。在现实-世界监测网络平均数据测算结果(13)上,在平均测算结果上以低度(CNS测算结果。