TranSplat: Generalizable 3D Gaussian Splatting from Sparse Multi-View Images with Transformers
Compared with previous 3D reconstruction methods like Nerf, recent Generalizable 3D Gaussian Splatting (G-3DGS) methods demonstrate impressive efficiency even in the sparse-view setting. However, the promising reconstruction performance of existing G-3DGS methods relies heavily on accurate multi-vie...
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Zusammenfassung: | Compared with previous 3D reconstruction methods like Nerf, recent
Generalizable 3D Gaussian Splatting (G-3DGS) methods demonstrate impressive
efficiency even in the sparse-view setting. However, the promising
reconstruction performance of existing G-3DGS methods relies heavily on
accurate multi-view feature matching, which is quite challenging. Especially
for the scenes that have many non-overlapping areas between various views and
contain numerous similar regions, the matching performance of existing methods
is poor and the reconstruction precision is limited. To address this problem,
we develop a strategy that utilizes a predicted depth confidence map to guide
accurate local feature matching. In addition, we propose to utilize the
knowledge of existing monocular depth estimation models as prior to boost the
depth estimation precision in non-overlapping areas between views. Combining
the proposed strategies, we present a novel G-3DGS method named TranSplat,
which obtains the best performance on both the RealEstate10K and ACID
benchmarks while maintaining competitive speed and presenting strong
cross-dataset generalization ability. Our code, and demos will be available at:
https://xingyoujun.github.io/transplat. |
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DOI: | 10.48550/arxiv.2408.13770 |