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Main Authors: Yang, Zhengxian, Pan, Shi, Wang, Shengqi, Wang, Haoxiang, Lin, Li, Li, Guanjun, Wen, Zhengqi, Lin, Borong, Tao, Jianhua, Yu, Tao
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.14359
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author Yang, Zhengxian
Pan, Shi
Wang, Shengqi
Wang, Haoxiang
Lin, Li
Li, Guanjun
Wen, Zhengqi
Lin, Borong
Tao, Jianhua
Yu, Tao
author_facet Yang, Zhengxian
Pan, Shi
Wang, Shengqi
Wang, Haoxiang
Lin, Li
Li, Guanjun
Wen, Zhengqi
Lin, Borong
Tao, Jianhua
Yu, Tao
contents User engagement is greatly enhanced by fully immersive multi-modal experiences that combine visual and auditory stimuli. Consequently, the next frontier in VR/AR technologies lies in immersive volumetric videos with complete scene capture, large 6-DoF interaction space, multi-modal feedback, and high resolution & frame-rate contents. To stimulate the reconstruction of immersive volumetric videos, we introduce ImViD, a multi-view, multi-modal dataset featuring complete space-oriented data capture and various indoor/outdoor scenarios. Our capture rig supports multi-view video-audio capture while on the move, a capability absent in existing datasets, significantly enhancing the completeness, flexibility, and efficiency of data capture. The captured multi-view videos (with synchronized audios) are in 5K resolution at 60FPS, lasting from 1-5 minutes, and include rich foreground-background elements, and complex dynamics. We benchmark existing methods using our dataset and establish a base pipeline for constructing immersive volumetric videos from multi-view audiovisual inputs for 6-DoF multi-modal immersive VR experiences. The benchmark and the reconstruction and interaction results demonstrate the effectiveness of our dataset and baseline method, which we believe will stimulate future research on immersive volumetric video production.
format Preprint
id arxiv_https___arxiv_org_abs_2503_14359
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle ImViD: Immersive Volumetric Videos for Enhanced VR Engagement
Yang, Zhengxian
Pan, Shi
Wang, Shengqi
Wang, Haoxiang
Lin, Li
Li, Guanjun
Wen, Zhengqi
Lin, Borong
Tao, Jianhua
Yu, Tao
Computer Vision and Pattern Recognition
User engagement is greatly enhanced by fully immersive multi-modal experiences that combine visual and auditory stimuli. Consequently, the next frontier in VR/AR technologies lies in immersive volumetric videos with complete scene capture, large 6-DoF interaction space, multi-modal feedback, and high resolution & frame-rate contents. To stimulate the reconstruction of immersive volumetric videos, we introduce ImViD, a multi-view, multi-modal dataset featuring complete space-oriented data capture and various indoor/outdoor scenarios. Our capture rig supports multi-view video-audio capture while on the move, a capability absent in existing datasets, significantly enhancing the completeness, flexibility, and efficiency of data capture. The captured multi-view videos (with synchronized audios) are in 5K resolution at 60FPS, lasting from 1-5 minutes, and include rich foreground-background elements, and complex dynamics. We benchmark existing methods using our dataset and establish a base pipeline for constructing immersive volumetric videos from multi-view audiovisual inputs for 6-DoF multi-modal immersive VR experiences. The benchmark and the reconstruction and interaction results demonstrate the effectiveness of our dataset and baseline method, which we believe will stimulate future research on immersive volumetric video production.
title ImViD: Immersive Volumetric Videos for Enhanced VR Engagement
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2503.14359