PreActo: Efficient Cross-Camera Object Tracking System in Video Analytics Edge Computing

Mar 17, 2023ยท
Thanh-Tung Nguyen
Thanh-Tung Nguyen
,
Siyoung Jang
,
Boyan Kodstadinov
,
Dongman Lee
ยท 0 min read
PreActo’s Operational Architecture
Abstract
Cross-camera real-time object tracking is one of the important, yet challenging applications of video analytics in edge computing environments. To provide accurate and efficient real-time tracking, a tracking target’’s future movements need to be predicted. Particularly, the destination camera and travel time of the target object are to be identified so that tracking duties can be handover-ed seamlessly. In this paper, we propose a collaborative cross-camera tracking system, called PreActo, with two key features (1) ResNet-based trajectory learning to exploit the rich spatio-temporal information embedded within objects’’ moving patterns, which has not been utilized by the existing literature, and (2) collaboration between the edge server and the edge device for real-time trajectory prediction and tracking handover. To prove the validity of our proposed system, we evaluate PreActo on a video dataset leveraging real-world trajectories. Evaluation results show that the proposed system reduces up to 7ร— the number of processed frames for handover, with 2ร— lower latency while providing 1.5ร— tracking precision improvement compared to the state-of-the-art.
Type
Publication
In The 21rd International Conference on Pervasive Computing and Communications (PerCom 2023)