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[bibtex]@InProceedings{An_2026_CVPR, author = {An, Honggyu and Jung, Jaewoo and Kim, Mungyeom and Kim, Chaehyun and Jeon, Minkyeong and Han, Jisang and Fukuda, Kazumi and Narihira, Takuya and Ko, Hyunah and Kim, Junsu and Hong, Sunghwan and Mitsufuji, Yuki and Kim, Seungryong}, title = {Learning Compact 3D Representations from Feed-Forward Novel View Synthesis}, booktitle = {Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)}, month = {June}, year = {2026}, pages = {363-373} }
Learning Compact 3D Representations from Feed-Forward Novel View Synthesis
Abstract
Reconstructing and understanding 3D scenes from unposed sparse views in a feed-forward manner remains as a challenging task in 3D computer vision. Recent approaches use per-pixel 3D Gaussian Splatting for reconstruction, followed by a 2D-to-3D feature lifting stage for scene understanding. However, they generate excessive redundant Gaussians, causing high memory overhead and sub-optimal multi-view feature aggregation, leading to degraded novel view synthesis and scene understanding performance. We propose C3G, a novel feed-forward framework that estimates compact 3D Gaussians only at essential spatial locations, minimizing redundancy while enabling effective feature lifting. We introduce learnable tokens that aggregate multi-view features through self-attention to guide Gaussian generation, ensuring each Gaussian integrates relevant visual features across views. We then exploit the learned attention patterns for Gaussian decoding to efficiently lift features. Extensive experiments on pose-free novel view synthesis, 3D open-vocabulary segmentation, and view-invariant feature aggregation demonstrate our approach's effectiveness. Results show that a compact yet geometrically meaningful representation is sufficient for high-quality scene reconstruction and understanding, achieving superior memory efficiency and feature fidelity compared to existing methods.
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