Volumetric video is a key enabler of immersive extended reality (XR) experiences and is often represented using point clouds for their structural simplicity. However, capturing volumetric content through multi-view acquisition and depth sensing poses many challenges, such as occlusions and depth mismatches. To foster research in this field, we introduce a unique dual-quality point cloud dataset, named UVG-CWI-DQPC, which is designed to support the development of point cloud enhancement, compression, and quality assessment. Our dataset includes 12 dynamic sequences captured simultaneously by: 1) a high-end capture system producing high-fidelity point clouds with extensive processing; and 2) a consumer-grade capture system relying on affordable RGB-D cameras, lightweight processing, and open-source tools. For each sequence, our dataset provides ground-truth point clouds from the high-end capture system and raw RGB-D footage from the consumer-grade capture system, along with calibration data and tools for point cloud generation. This dual-quality setup enables direct comparison and benchmarking of algorithms for densification, occlusion removal, registration, and quality enhancement. Our dataset is publicly available under a permissive license to support reproducible research and standardization work in Moving Picture Experts Group (MPEG) and 3rd Generation Partnership Project (3GPP).

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doi.org/10.1145/3746027.3758263
33rd ACM International Conference on Multimedia
Distributed and Interactive Systems

Gautier, G., Zhou, X., Nguyen, T., Jansen, J., Fréneau, L., Viitanen, M., Phan, U., Käpylä, J., Viola, I., Mercat, A., César Garcia, P. S.& Vanne, J. (2025). UVG-CWI-DQPC: Dual-quality point cloud dataset for volumetric video applications. Proceedings of the ACM International Conference on Multimedia, 13112–13118.https://doi.org/10.1145/3746027.3758263