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AccDecoder: Accelerated Decoding for Neural-enhanced Video Analytics

Authors :
Yuan, Tingting
Mi, Liang
Wang, Weijun
Dai, Haipeng
Fu, Xiaoming
Publication Year :
2023

Abstract

The quality of the video stream is key to neural network-based video analytics. However, low-quality video is inevitably collected by existing surveillance systems because of poor quality cameras or over-compressed/pruned video streaming protocols, e.g., as a result of upstream bandwidth limit. To address this issue, existing studies use quality enhancers (e.g., neural super-resolution) to improve the quality of videos (e.g., resolution) and eventually ensure inference accuracy. Nevertheless, directly applying quality enhancers does not work in practice because it will introduce unacceptable latency. In this paper, we present AccDecoder, a novel accelerated decoder for real-time and neural-enhanced video analytics. AccDecoder can select a few frames adaptively via Deep Reinforcement Learning (DRL) to enhance the quality by neural super-resolution and then up-scale the unselected frames that reference them, which leads to 6-21% accuracy improvement. AccDecoder provides efficient inference capability via filtering important frames using DRL for DNN-based inference and reusing the results for the other frames via extracting the reference relationship among frames and blocks, which results in a latency reduction of 20-80% than baselines.<br />Comment: Accepted by 2023 IEEE INFOCOM

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2301.08664
Document Type :
Working Paper