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EVolSplat4D: Efficient Volume-based Gaussian Splatting for 4D Urban Scene Synthesis

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Novel view synthesis (NVS) of static and dynamic urban scenes is essential for autonomous driving simulation, yet existing methods often struggle to balance reconstruction time with quality. While state-of-the-art neural radiance fields and 3D Gaussian Splatting approaches achieve photorealism, they often rely on time-consuming per-scene optimization. Conversely, emerging feed-forward methods frequently adopt per-pixel Gaussian representations, which lead to 3D inconsistencies when aggregating multi-view predictions in complex, dynamic environments. We propose EvolSplat4D, a feed-forward framework that moves beyond existing per-pixel paradigms by unifying volume-based and pixel-based Gaussian prediction across three specialized branches. For close-range static regions, we predict consistent geometry of 3D Gaussians over multiple frames directly from a 3D feature volume, complemented by a semantically-enhanced image-based rendering module for predicting their appearance. For dynamic actors, we utilize object-centric canonical spaces and a motion-adjusted rendering module to aggregate temporal features, ensuring stable 4D reconstruction despite noisy motion priors. Far-Field scenery is handled by an efficient per-pixel Gaussian branch to ensure full-scene coverage. Experimental results on the KITTI-360, KITTI, Waymo, and PandaSet datasets show that EvolSplat4D reconstructs both static and dynamic environments with superior accuracy and consistency, outperforming both per-scene optimization and state-of-the-art feed-forward baselines.

Sheng Miao, Sijin Li, Pan Wang, Dongfeng Bai, Bingbing Liu, Yue Wang, Andreas Geiger, Yiyi Liao• 2026

Related benchmarks

TaskDatasetResultRank
New View SynthesisWaymo (val)
PSNR (dB)26.32
9
Novel View SynthesisKITTI-360 static (val)
PSNR23.36
9
Novel View SynthesisWaymo Open Dataset Out-of-Domain (val)
PSNR24.43
9
4D Scene ReconstructionWaymo NOTR Drop 80% sparsity level (3 sequences)
PSNR28.29
7
Novel View SynthesisKITTI In-Domain (val)
PSNR20.76
5
Novel View SynthesisPandaSet Out-of-Domain (val)
PSNR26.27
5
View ExtrapolationKITTI
KID0.062
3
View ExtrapolationWaymo
KID0.063
3
View ExtrapolationPandaSet
KID0.08
3
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