Energy-Aware Frame Rate Selection for Video Coding
Geetha Ramasubbu, Andr\`e Kaup, Christian Herglotz

TL;DR
This paper analyzes how reducing frame rates affects video quality and energy consumption, and introduces a machine learning-based method to select energy-efficient frame rates without compromising visual quality.
Contribution
It provides an in-depth analysis of energy and quality impacts of frame rate reduction and proposes a novel machine learning approach for energy-aware frame rate selection.
Findings
Energy savings of around 17.5% in encoding and decoding.
Maintained visual quality with reduced energy consumption.
Achieved 3.38% bitrate savings at constant quality.
Abstract
The main contributions of this paper are twofold: First, we present an in-depth analysis of the impact of frame rate reductions on the visual quality of the video and the encoding as well as decoding energy. Second, we propose a lightweight frame rate selection method for energy- and quality-aware encoding. Concerning the first contribution, this paper performs extensive encoding and decoding measurements, followed by an investigation of the impact of temporal downsampling on the energy demand of encoding and decoding at different frame rates. Furthermore, we determine the objective visual quality of the downsampled videos. As a result of this investigation, we identify content- and quantization-setting-dependent energy-aware frame rates, i.e., the temporal downsampling factors that lead to Pareto-optimality in terms of energy and quality. We demonstrate that significant energy savings…
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Taxonomy
TopicsImage and Video Quality Assessment · Video Coding and Compression Technologies · Visual Attention and Saliency Detection
