ExFMan: Rendering 3D Dynamic Humans with Hybrid Monocular Blurry Frames and Events
Kanghao Chen, Zeyu Wang, Lin Wang

TL;DR
ExFMan is a novel neural rendering framework that combines RGB frames and event camera data to effectively reconstruct high-quality 3D humans in rapid motion, overcoming motion blur challenges.
Contribution
It introduces a hybrid RGB-event neural rendering approach with velocity-aware losses, enabling clearer 3D human reconstruction under fast motion conditions.
Findings
Reconstructs sharper, higher quality humans in rapid motion
Effectively mitigates motion blur in monocular videos
Outperforms existing methods on synthetic and real datasets
Abstract
Recent years have witnessed tremendous progress in the 3D reconstruction of dynamic humans from a monocular video with the advent of neural rendering techniques. This task has a wide range of applications, including the creation of virtual characters for virtual reality (VR) environments. However, it is still challenging to reconstruct clear humans when the monocular video is affected by motion blur, particularly caused by rapid human motion (e.g., running, dancing), as often occurs in the wild. This leads to distinct inconsistency of shape and appearance for the rendered 3D humans, especially in the blurry regions with rapid motion, e.g., hands and legs. In this paper, we propose ExFMan, the first neural rendering framework that unveils the possibility of rendering high-quality humans in rapid motion with a hybrid frame-based RGB and bio-inspired event camera. The ``out-of-the-box''…
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Taxonomy
Topics3D Shape Modeling and Analysis · Human Motion and Animation · Human Pose and Action Recognition
