Papers
arxiv:2512.05113

Splannequin: Freezing Monocular Mannequin-Challenge Footage with Dual-Detection Splatting

Published on Dec 4
· Submitted by Yu-Lun Liu on Dec 5
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Abstract

Splannequin is a regularization technique that improves the visual quality of frozen 3D scenes synthesized from monocular videos by addressing artifacts in dynamic Gaussian splatting.

AI-generated summary

Synthesizing high-fidelity frozen 3D scenes from monocular Mannequin-Challenge (MC) videos is a unique problem distinct from standard dynamic scene reconstruction. Instead of focusing on modeling motion, our goal is to create a frozen scene while strategically preserving subtle dynamics to enable user-controlled instant selection. To achieve this, we introduce a novel application of dynamic Gaussian splatting: the scene is modeled dynamically, which retains nearby temporal variation, and a static scene is rendered by fixing the model's time parameter. However, under this usage, monocular capture with sparse temporal supervision introduces artifacts like ghosting and blur for Gaussians that become unobserved or occluded at weakly supervised timestamps. We propose Splannequin, an architecture-agnostic regularization that detects two states of Gaussian primitives, hidden and defective, and applies temporal anchoring. Under predominantly forward camera motion, hidden states are anchored to their recent well-observed past states, while defective states are anchored to future states with stronger supervision. Our method integrates into existing dynamic Gaussian pipelines via simple loss terms, requires no architectural changes, and adds zero inference overhead. This results in markedly improved visual quality, enabling high-fidelity, user-selectable frozen-time renderings, validated by a 96% user preference. Project page: https://chien90190.github.io/splannequin/

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Paper submitter

Splannequin transforms imperfect Mannequin-Challenge videos into completely frozen videos.

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