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NeuralDome

NeuralDome: A Neural Modeling Pipeline on Multi-View Human-Object Interactions
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Juze Zhang, Haimin Luo1, Hongdi Yang, Xinru Xu, Qianyang Wu, Ye Shi, Jingyi Yu, Lan Xu, Jingya Wang

NeRF
SMPL
CVPR 2023
Juzezhang/NeuralDome_Toolbox

Official Dataset Toolbox of the paper “[CVPR 2023]NeuralDome: A Neural Modeling Pipeline on Multi-View Human-Object Interactions” and “[CVPR2024]HOI-M3: Capture Multiple Humans and Objects Interaction within Contextual Environment”

Python
39
4

Abstract
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Humans constantly interact with objects in daily life tasks. Capturing such processes and subsequently conducting visual inferences from a fixed viewpoint suffers from occlusions, shape and texture ambiguities, motions, etc. To mitigate the problem, it is essential to build a training dataset that captures free-viewpoint interactions. We construct a dense multi-view dome to acquire a complex human object interaction dataset, named HODome, that consists of ∼71M frames on 10 subjects interacting with 23 objects. To process the HODome dataset, we develop NeuralDome, a layer-wise neural processing pipeline tailored for multi-view video inputs to conduct accurate tracking, geometry reconstruction and free-view rendering, for both human subjects and objects. Extensive experiments on the HODome dataset demonstrate the effectiveness of NeuralDome on a variety of inference, modeling, and rendering tasks.
Paper

Approach
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Neural Dome overview
Neural Dome overview.

Results
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Data
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Comparisons
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Performance
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Papers Published @ 2023 - This article is part of a series.
Part 16: This Article