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Tensor4D : Efficient Neural 4D Decomposition for High-fidelity Dynamic Reconstruction and Rendering

About

We present Tensor4D, an efficient yet effective approach to dynamic scene modeling. The key of our solution is an efficient 4D tensor decomposition method so that the dynamic scene can be directly represented as a 4D spatio-temporal tensor. To tackle the accompanying memory issue, we decompose the 4D tensor hierarchically by projecting it first into three time-aware volumes and then nine compact feature planes. In this way, spatial information over time can be simultaneously captured in a compact and memory-efficient manner. When applying Tensor4D for dynamic scene reconstruction and rendering, we further factorize the 4D fields to different scales in the sense that structural motions and dynamic detailed changes can be learned from coarse to fine. The effectiveness of our method is validated on both synthetic and real-world scenes. Extensive experiments show that our method is able to achieve high-quality dynamic reconstruction and rendering from sparse-view camera rigs or even a monocular camera. The code and dataset will be released at https://liuyebin.com/tensor4d/tensor4d.html.

Ruizhi Shao, Zerong Zheng, Hanzhang Tu, Boning Liu, Hongwen Zhang, Yebin Liu• 2022

Related benchmarks

TaskDatasetResultRank
Novel View SynthesisD-NeRF synthetic (test)
Average PSNR27.62
42
Dynamic Scene ReconstructionSoccer Penalty-Kick (S-PK) Synthetic
PSNR25.86
9
Dynamic Scene ReconstructionSoccer Multi-Player (S-MP) (Synthetic)
PSNR25.82
9
Dynamic Scene ReconstructionDance-Walking-Standing (DWS) (Synthetic)
PSNR16.55
9
Dynamic Scene ReconstructionD-NeRF (test)
Hook PSNR29.03
9
Novel View SynthesisD-NeRF Hellwarrior
PSNR31.4
8
Novel View SynthesisD-NeRF Hook
PSNR29.03
8
Novel View SynthesisD-NeRF Jumpingjacks
PSNR24.01
8
Novel View SynthesisD-NeRF Trex
PSNR23.51
8
Novel View SynthesisD-NeRF BouncingBalls
PSNR25.36
8
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