Learn to Compress (LtC): Efficient Learning-based Streaming Video Analytics
Quazi Mishkatul Alam, Israat Haque, Nael Abu-Ghazaleh

TL;DR
LtC is a learning-based streaming video compression framework that reduces bandwidth and delay by semantically aware and temporally filtered video transmission, optimizing edge analytics performance.
Contribution
It introduces a collaborative training approach for semantic-aware video compression using a lightweight neural network at the source, guided by server-based analytics algorithms.
Findings
Reduces bandwidth by 28-35%
Shortens response delay by up to 45%
Maintains similar analytics accuracy
Abstract
Video analytics are often performed as cloud services in edge settings, mainly to offload computation, and also in situations where the results are not directly consumed at the video sensors. Sending high-quality video data from the edge devices can be expensive both in terms of bandwidth and power use. In order to build a streaming video analytics pipeline that makes efficient use of these resources, it is therefore imperative to reduce the size of the video stream. Traditional video compression algorithms are unaware of the semantics of the video, and can be both inefficient and harmful for the analytics performance. In this paper, we introduce LtC, a collaborative framework between the video source and the analytics server, that efficiently learns to reduce the video streams within an analytics pipeline. Specifically, LtC uses the full-fledged analytics algorithm at the server as a…
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Taxonomy
TopicsImage and Video Quality Assessment · Image Enhancement Techniques · Video Coding and Compression Technologies
