What is it about?

This is guide to create metrics for measuring quality of dynamic point clouds (3D videos). This work aims to provide a direction on how to apply a temporal pooling function to combine per-frame quality predictions generated with descriptor-based PC quality assessment methods to estimate the quality of dynamic PCs. We have shown for the first time that the performance of temporal pooling is consistently better when a temporal variation pooling is used.

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Why is it important?

The study provides insights into designing immersive 3D video quality metrics. This task is fundamental to allow a variety of applications that enable the consumption of these videos.

Perspectives

This study aims to help professionals in the field of multimedia, image processing and computer vision, especially those who work with immersive 3D videos based on point clouds.

Pedro Freitas
Samsung Electronics

Read the Original

This page is a summary of: Comparative Evaluation of Temporal Pooling Methods for No-Reference Quality Assessment of Dynamic Point Clouds, October 2022, ACM (Association for Computing Machinery),
DOI: 10.1145/3552482.3556552.
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