FSVVD:全场景体积视频数据集

Kaiyuan Hu, Yili Jin, Hao Yang, Junhua Liu, Fang Wang
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引用次数: 4

摘要

近年来,沉浸式多媒体在现实世界和虚拟空间之间架起了一座桥梁。体积视频作为一种新兴的具有代表性的3D视频范式,为扩展现实提供了前所未有的沉浸式和交互式视频观看体验。尽管具有巨大的潜力,但对三维体视频的研究仍处于起步阶段,需要有足够完整的数据集进行进一步的探索。然而,现有的相关体积视频数据集大多只包含单个对象,缺乏关于场景和它们之间交互的细节。在本文中,我们专注于当前最广泛使用的数据格式——点云,并首次发布了一个包含多人及其与外部环境交互的日常活动的全场景体积视频数据集。对数据集进行了全面的描述和分析,并对该数据集进行了潜在的利用。数据集和其他工具可通过以下网站访问:https://cuhksz-inml.github.io/full_scene_volumetric_video_dataset/。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FSVVD: A Dataset of Full Scene Volumetric Video
Recent years have witnessed a rapid development of immersive multimedia which bridges the gap between the real world and virtual space. Volumetric videos, as an emerging representative 3D video paradigm that empowers extended reality, stand out to provide unprecedented immersive and interactive video watching experience. Despite the tremendous potential, the research towards 3D volumetric video is still in its infancy, relying on sufficient and complete datasets for further exploration. However, existing related volumetric video datasets mostly only include a single object, lacking details about the scene and the interaction between them. In this paper, we focus on the current most widely used data format, point cloud, and for the first time release a full-scene volumetric video dataset that includes multiple people and their daily activities interacting with the external environments. Comprehensive dataset description and analysis are conducted, with potential usage of this dataset. The dataset and additional tools can be accessed via the following website: https://cuhksz-inml.github.io/full_scene_volumetric_video_dataset/.
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