Recently, 3D Gaussian Spatting (3DGS) has gained widespread attention in Novel View Synthesis (NVS) due to the remarkable real-time rendering performance. However, the substantial cost of storage and transmission of vanilla 3DGS hinders its further application (hundreds of megabytes or even gigabytes for a single scene). Motivated by the achievements of prediction in video compression, we introduce the prediction technique into the anchor-based Gaussian representation to effectively reduce the bit rate. Specifically, we propose a spatial condition-based prediction module to utilize the grid-captured scene information for prediction, with a residual compensation strategy designed to learn the missing fine-grained information. Besides, to further compress the residual, we propose an instance-aware hyper prior, developing a structure-aware and instance-aware entropy model. Extensive experiments demonstrate the effectiveness of our prediction-based compression framework and each technical component. Even compared with SOTA compression method, our framework still achieves a bit rate savings of 24.42 percent. Code is to be released!
@article{arxiv.2503.23337,
title = {Enhancing 3D Gaussian Splatting Compression via Spatial Condition-based Prediction},
author = {Jingui Ma and Yang Hu and Luyang Tang and Jiayu Yang and Yongqi Zhai and Ronggang Wang},
journal= {arXiv preprint arXiv:2503.23337},
year = {2025}
}
Comments
The paper has been accepted by ICME2025 in March,2025