ILCAS: Imitation Learning-Based Configuration-Adaptive Streaming for Live Video Analytics with Cross-Camera Collaboration
Duo Wu, Dayou Zhang, Miao Zhang, Ruoyu Zhang, Fangxin Wang, Shuguang, Cui

TL;DR
ILCAS is a novel imitation learning-based system for adaptive live video streaming that improves accuracy and reduces lag by leveraging expert demonstrations and cross-camera collaboration.
Contribution
ILCAS introduces an imitation learning approach with expert demonstrations and cross-camera collaboration for adaptive video streaming, outperforming existing DRL-based methods.
Findings
Achieves 2-20.9% higher mean accuracy
Reduces chunk upload lag by 19.9-85.3%
Outperforms state-of-the-art solutions in experiments
Abstract
The high-accuracy and resource-intensive deep neural networks (DNNs) have been widely adopted by live video analytics (VA), where camera videos are streamed over the network to resource-rich edge/cloud servers for DNN inference. Common video encoding configurations (e.g., resolution and frame rate) have been identified with significant impacts on striking the balance between bandwidth consumption and inference accuracy and therefore their adaption scheme has been a focus of optimization. However, previous profiling-based solutions suffer from high profiling cost, while existing deep reinforcement learning (DRL) based solutions may achieve poor performance due to the usage of fixed reward function for training the agent, which fails to craft the application goals in various scenarios. In this paper, we propose ILCAS, the first imitation learning (IL) based configuration-adaptive VA…
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