CANS: Communication Limited Camera Network Self-Configuration for Intelligent Industrial Surveillance
Jingzheng Tu, Qimin Xu, Cailian Chen

TL;DR
This paper introduces CANS, an adaptive self-configuration method for camera networks in industrial IoT, optimizing accuracy and latency under communication constraints and dynamic network conditions.
Contribution
It proposes a novel adaptive self-configuration approach for multi-camera networks that balances accuracy and latency considering network and content dynamics.
Findings
Achieves low latency of 13 ms on average
Attains high detection accuracy of 92% on average
Effective under real-world network dynamics
Abstract
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…
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Taxonomy
TopicsImage and Video Quality Assessment · Video Surveillance and Tracking Methods · Visual Attention and Saliency Detection
Methodstravel james
