Papers
arxiv:2512.08406

SAM-Body4D: Training-Free 4D Human Body Mesh Recovery from Videos

Published on Dec 9
· Submitted by Mingqi Gao on Dec 10
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Abstract

SAM-Body4D is a training-free framework that enhances 3D human mesh recovery from videos by ensuring temporal consistency and robustness to occlusions through masklet generation and refinement.

AI-generated summary

Human Mesh Recovery (HMR) aims to reconstruct 3D human pose and shape from 2D observations and is fundamental to human-centric understanding in real-world scenarios. While recent image-based HMR methods such as SAM 3D Body achieve strong robustness on in-the-wild images, they rely on per-frame inference when applied to videos, leading to temporal inconsistency and degraded performance under occlusions. We address these issues without extra training by leveraging the inherent human continuity in videos. We propose SAM-Body4D, a training-free framework for temporally consistent and occlusion-robust HMR from videos. We first generate identity-consistent masklets using a promptable video segmentation model, then refine them with an Occlusion-Aware module to recover missing regions. The refined masklets guide SAM 3D Body to produce consistent full-body mesh trajectories, while a padding-based parallel strategy enables efficient multi-human inference. Experimental results demonstrate that SAM-Body4D achieves improved temporal stability and robustness in challenging in-the-wild videos, without any retraining. Our code and demo are available at: https://github.com/gaomingqi/sam-body4d.

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Paper author Paper submitter
edited about 17 hours ago

Code & Gradio Demo: https://github.com/gaomingqi/sam-body4d
See our FULL demo and Gradio Demo video below:

Paper author Paper submitter

Demo 1: Temporally consistent human meshes across the entire video
demo1
Demo 2: Robust multi-human recovery under heavy occlusions
demo2
Gradio Demo

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