ContextGS: Compact 3D Gaussian Splatting with Anchor Level Context Model
Recently, 3D Gaussian Splatting (3DGS) has become a promising framework for novel view synthesis, offering fast rendering speeds and high fidelity. However, the large number of Gaussians and their associated attributes require effective compression techniques. Existing methods primarily compress neu...
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Zusammenfassung: | Recently, 3D Gaussian Splatting (3DGS) has become a promising framework for
novel view synthesis, offering fast rendering speeds and high fidelity.
However, the large number of Gaussians and their associated attributes require
effective compression techniques. Existing methods primarily compress neural
Gaussians individually and independently, i.e., coding all the neural Gaussians
at the same time, with little design for their interactions and spatial
dependence. Inspired by the effectiveness of the context model in image
compression, we propose the first autoregressive model at the anchor level for
3DGS compression in this work. We divide anchors into different levels and the
anchors that are not coded yet can be predicted based on the already coded ones
in all the coarser levels, leading to more accurate modeling and higher coding
efficiency. To further improve the efficiency of entropy coding, e.g., to code
the coarsest level with no already coded anchors, we propose to introduce a
low-dimensional quantized feature as the hyperprior for each anchor, which can
be effectively compressed. Our work pioneers the context model in the anchor
level for 3DGS representation, yielding an impressive size reduction of over
100 times compared to vanilla 3DGS and 15 times compared to the most recent
state-of-the-art work Scaffold-GS, while achieving comparable or even higher
rendering quality. |
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DOI: | 10.48550/arxiv.2405.20721 |