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Poster Année : 2022

Frantic race for higher-quality images, at what cost?

Course effrénée aux images de meilleure qualité, à quel prix ?

Résumé

When implementing computer vision algorithms, the quality of the video input is a crucial parameter for systematic application as : • Training and inference conditions of Deep Learning models may differ. • Video quality may be downgraded due to sourcing or transfer encoding. • Storage capacity may limit the volume/quantity of data available. To better understand the sensitivity of inference with regarding video quality, we investigated the effect of video compression on the output of a human pose estimation network model.
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Dates et versions

hal-04032785 , version 1 (16-03-2023)

Identifiants

  • HAL Id : hal-04032785 , version 1

Citer

Alexandre Schortgen, Lionel Reveret, Guillaume Saulière, Antoine Muller, Thibault Goyallon, et al.. Frantic race for higher-quality images, at what cost?: Application of computer vision models to high level boxing test matches. 2nd Inria-DFKI European Summer School on AI (IDESSAI 2022), Aug 2022, Saarbrücken, France. ⟨hal-04032785⟩
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