Juice: Lightweight Foreground Prediction for On-Camera Surveillance Video Compression

Jiajun Yan, Hongzi Zhu, Shan Chang, Li Li and Minyi Guo

in Proceedings of IEEE INFOCOM 2026, Tokyo, Japan.

Video surveillance plays a crucial role in modern society, fostering safer, smarter, and more efficient environments. However, it is of great challenge to transmit, store and analyze city-scale surveillance videos due to the massive amounts of data. In this work, we propose Juice, a lightweight surveillance video compression scheme that can be implemented on H.265-compliant cameras. The core idea of Juice is to effectively utilize the CU (Coding Unit) division information generated during the encoding process to predict tiles with foreground objects in each frame. Furthermore, redundant background tiles between frames are removed to minimize the compressed video size without compromising the downstream surveillance detection accuracy. We collect a real-world transportation traffic surveillance video datasets, consisting of 541 video clips recorded at 42 distinct locations in different light and weather conditions. We implement Juice and conduct extensive trace-driven simulations. The results demonstrate that Juice is lightweight and can process at least 32 FPS at a resolution of 1920×1080 on a single-core common CPU and can achieve an average 78.2% compression rate. Furthermore, Juice has little impact on downstream AI detection algorithms. Specifically, the object detection on compressed videos undergoes a minor 1% accuracy drop, compared to detection on uncompressed videos.

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