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Gaussians on a Diet: High-Quality Memory-Bounded 3D Gaussian Splatting Training

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3D Gaussian Splatting (3DGS) has revolutionized novel view synthesis with high-quality rendering through continuous aggregations of millions of 3D Gaussian primitives. However, it suffers from a substantial memory footprint, particularly during training due to uncontrolled densification, posing a critical bottleneck for deployment on memory-constrained edge devices. While existing methods prune redundant Gaussians post-training, they fail to address the peak memory spikes caused by the abrupt growth of Gaussians early in the training process. To solve the training memory consumption problem, we propose a systematic memory-bounded training framework that dynamically optimizes Gaussians through iterative growth and pruning. In other words, the proposed framework alternates between incremental pruning of low-impact Gaussians and strategic growing of new primitives with an adaptive Gaussian compensation, maintaining a near-constant low memory usage while progressively refining rendering fidelity. We comprehensively evaluate the proposed training framework on various real-world datasets under strict memory constraints, showing significant improvements over existing state-of-the-art methods. Particularly, our proposed method practically enables memory-efficient 3DGS training on NVIDIA Jetson AGX Xavier, achieving similar visual quality with up to 80% lower peak training memory consumption than the original 3DGS.

Yangming Zhang, Jian Xu, Chaojian Li, Kunxiong Zhu, Wei Niu, Gagan Agrawal, Yang Katie Zhao, Jian Wang, Yingyan Celine Lin, Miao Yin• 2026

Related benchmarks

TaskDatasetResultRank
Novel View SynthesisDeep Blending
PSNR29.64
80
Novel View SynthesisDeep Blending (test)--
80
Novel View SynthesisMip-NeRF 360
PSNR27.3
37
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