CVNov 20, 2025

TRIM: Scalable 3D Gaussian Diffusion Inference with Temporal and Spatial Trimming

arXiv:2511.16642v14 citationsh-index: 1Has Code
Originality Incremental advance
AI Analysis

This work addresses scalability issues in 3D diffusion models for applications like 3D content creation, though it is incremental as it builds on existing diffusion frameworks.

The paper tackles the problem of slow and inefficient inference in 3D Gaussian diffusion models by proposing TRIM, a post-training approach that uses temporal and spatial trimming strategies, resulting in significant improvements in efficiency and quality for 3D generation.

Recent advances in 3D Gaussian diffusion models suffer from time-intensive denoising and post-denoising processing due to the massive number of Gaussian primitives, resulting in slow generation and limited scalability along sampling trajectories. To improve the efficiency of 3D diffusion models, we propose $\textbf{TRIM}$ ($\textbf{T}$rajectory $\textbf{R}$eduction and $\textbf{I}$nstance $\textbf{M}$ask denoising), a post-training approach that incorporates both temporal and spatial trimming strategies, to accelerate inference without compromising output quality while supporting the inference-time scaling for Gaussian diffusion models. Instead of scaling denoising trajectories in a costly end-to-end manner, we develop a lightweight selector model to evaluate latent Gaussian primitives derived from multiple sampled noises, enabling early trajectory reduction by selecting candidates with high-quality potential. Furthermore, we introduce instance mask denoising to prune learnable Gaussian primitives by filtering out redundant background regions, reducing inference computation at each denoising step. Extensive experiments and analysis demonstrate that TRIM significantly improves both the efficiency and quality of 3D generation. Source code is available at $\href{https://github.com/zeyuanyin/TRIM}{link}$.

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